Learned model generation method

ABSTRACT

A shape data group that is shape data of each of a predetermined number or more of winding bodies correlated with time information is acquired, a first defect ratio before maintenance is calculated on the basis of each shape data group of the predetermined number of winding bodies read before the maintenance, a second defect ratio after the maintenance is calculated on the basis of each shape data group of the predetermined number of winding bodies read after the maintenance, and a facility state diagnosis model is generated by using each shape data group of the predetermined number of winding bodies read before the maintenance in a case where a difference between the first defect ratio and the second defect ratio is greater than or equal to a predetermined value.

BACKGROUND 1. Technical Field

The present disclosure relates to a learned model generation method, an apparatus, and a non-transitory computer readable medium used to display information regarding maintenance of a production facility.

2. Description of the Related Art

It is common practice to provide a maintenance system in a certain facility in order to prevent deterioration and failure and to maintain a normal operation. Japanese Patent Unexamined Publication No. 2017-167708 discloses a maintenance system that monitors the occurrence of abnormalities such as a drainage pump failure and a switchboard ground fault in a substation, and, in a case where an abnormality occurs, notifies a facility related person of the abnormality, and stores information regarding maintenance work performed for abnormalities performed by the facility related person who receives the notification.

SUMMARY

According to the present disclosure, there is provided a learned model generation method of generating a learned model for maintenance of a production apparatus including a first supply reel that supplies a first electrode sheet, a second supply reel that supplies a second electrode sheet, a first bonding roller that is provided for the first electrode sheet, a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other, a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method including acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point of reading or producing each of the predetermined number or more of winding bodies, and second data indicating a position of the second end surface corresponding to the time information; outputting, to a display device for maintenance, information indicating that the winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; extracting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points on the basis of the time information, and calculating a first defect ratio of the predetermined number or more of winding bodies read before the maintenance on the basis of the extracted first data and second data; extracting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points on the basis of the time information, and calculating a second defect ratio of the predetermined number or more of winding bodies read after the maintenance on the basis of the extracted first data and second data; and not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for generating the learned model in a case where it is determined that a first difference between the first defect ratio and the second defect ratio is less than a predetermined value, and generating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the first difference is greater than or equal to the predetermined value.

According to the present disclosure, there is provided a learned model generation method of generating a learned model for maintenance of a production apparatus including a first supply reel that supplies a first electrode sheet, a second supply reel that supplies a second electrode sheet, a first bonding roller that is provided for the first electrode sheet, a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other, a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method including acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface read along the radial direction, corresponding to the time information; outputting, to a display device for maintenance, information indicating that the winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; and extracting the first data and the second data of each of the predetermined number or more of winding bodies having different reading or production time points before and after the maintenance on the basis of the time information, not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for generating the learned model in a case where it is determined that a second defect ratio of the predetermined number or more of winding bodies read after the maintenance is greater than or equal to a predetermined value on the basis of the extracted first data and second data, and generating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second defect ratio is less than the predetermined value.

According to the present disclosure, there is provided a learned model generation method of generating a learned model for maintenance of a production apparatus including a first supply reel that supplies a first electrode sheet, a second supply reel that supplies a second electrode sheet, a first bonding roller that is provided for the first electrode sheet, a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other, a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method including acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information; generating a learned model for determining whether a defect cause of the winding body is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; outputting, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model; and not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second difference between a first probability that a defect of the winding body is improved and a second probability that the defect of the winding body is improved is less than a predetermined value on the basis of the time information, the first probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points to the learned model, and the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second difference is greater than or equal to the predetermined value.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 is a network diagram including a maintenance display apparatus and a production apparatus to which the maintenance display apparatus is applied;

FIG. 2 is a flowchart for describing all process steps in the maintenance display apparatus;

FIG. 3A is a diagram exemplifying a configuration of a winder that produces a winding body in the production apparatus;

FIG. 3B is a perspective view exemplifying a winding body produced in the winder;

FIG. 4A is a schematic diagram exemplifying a scene in which an inspection machine inspects a winding body;

FIG. 4B is a schematic diagram exemplifying a sectional shape of the winding body along a radial direction;

FIG. 4C is a diagram exemplifying an image generated by the inspection machine scanning a section of the winding body illustrated in FIG. 4B;

FIG. 5 is a schematic diagram illustrating a correspondence between a sectional shape of the winding body and shape data;

FIG. 6 is a block diagram exemplifying a functional configuration of a maintenance display apparatus according to a first exemplary embodiment;

FIG. 7A is a diagram exemplifying production result data;

FIG. 7B is a diagram exemplifying production result data;

FIG. 8 is a diagram exemplifying maintenance result data;

FIG. 9 is a sequence diagram for schematically describing the overall flow of processes in the maintenance display apparatus;

FIG. 10 is a sequence diagram for schematically describing the overall flow of processes in the maintenance display apparatus;

FIG. 11 is a flowchart for describing a process executed by a maintenance effect determinator in a learning process;

FIG. 12A is a conceptual diagram for describing a scene in which an effect of maintenance work in the learning process is determined;

FIG. 12B is a conceptual diagram for describing a scene in which an effect of maintenance work in the learning process is determined;

FIG. 13A is a conceptual diagram for describing a scene in which an effect of maintenance work in the learning process is determined;

FIG. 13B is a conceptual diagram for describing a scene in which an effect of maintenance work in the learning process is determined;

FIG. 14 is a flowchart for describing a process executed by a facility state diagnosis model generator in the learning process;

FIG. 15 is a flowchart for describing a process executed by a facility state diagnoser in an identification process;

FIG. 16 is a flowchart for describing a process executed by a notification determinator in the identification process;

FIG. 17A is a diagram illustrating a specific example of maintenance group information;

FIG. 17B is a diagram illustrating a specific example of a maintenance plan list;

FIG. 18 is a flowchart for describing a process executed by the maintenance effect determinator in an update process;

FIG. 19A is a conceptual diagram for describing a scene in which an effect of maintenance work is determined in the update process;

FIG. 19B is a conceptual diagram for describing a scene in which an effect of maintenance work is determined in the update process;

FIG. 20 is a flowchart for describing a process executed by the facility state diagnosis model generator in the update process;

FIG. 21 is a diagram exemplifying a configuration of a maintenance display apparatus according to a second exemplary embodiment;

FIG. 22 is a flowchart for describing a process executed by a maintenance effect determinator in the second exemplary embodiment;

FIG. 23 is a diagram exemplifying a configuration of a maintenance display apparatus according to a third exemplary embodiment;

FIG. 24 is a flowchart for describing a process performed by a facility state diagnosis model generator in the third exemplary embodiment;

FIG. 25 is a flowchart for describing a process performed by a notification determinator in the third exemplary embodiment;

FIG. 26A is a diagram for describing a modification example of a method of determining whether or not maintenance work is effective in the maintenance effect determinator in a learning process;

FIG. 26B is a diagram for describing a modification example of a method of determining whether or not maintenance work is effective in the maintenance effect determinator in the learning process;

FIG. 27A is a diagram for describing a modification example of a method of determining whether or not maintenance work is effective in the maintenance effect determinator in an update process; and

FIG. 27B is a diagram for describing a modification example of a method of determining whether or not maintenance work is effective in the maintenance effect determinator in an update process.

DETAILED DESCRIPTIONS

In the technique disclosed in Japanese Patent Unexamined Publication No. 2017-167708, the facility related person is notified after an abnormality occurs in the facility. Thus, the maintenance is performed by the facility related person after an abnormality occurs. In a case where the maintenance is performed after an abnormality occurs, it is necessary to stop an operation of the facility. Therefore, it is desirable that a notification is performed at the time at which the maintenance is determined as being necessary before the occurrence of the abnormality. Thus, it is required to detect a sign of an abnormality occurring in a facility.

An object of the present disclosure is to provide a learned model generation method, an apparatus, and a non-transitory computer readable medium for detecting a sign of an abnormality.

Hereinafter, each exemplary embodiment of the present disclosure will be described in detail with reference to the drawings. However, detailed description more than necessary, for example, detailed description of well-known matters and repeated description of substantially the same configuration may be omitted.

The following description and referenced drawings are provided for those skilled in the art to understand the present disclosure and are not intended to limit the scope of the claims of the present disclosure.

FIRST EXEMPLARY EMBODIMENT

Maintenance Display Apparatus 100 and Production Apparatus 200

FIG. 1 is a network diagram including maintenance display apparatus 100 according to a first exemplary embodiment of the present disclosure and production apparatus 200 to which maintenance display apparatus 100 is applied. Maintenance display apparatus 100 described in the present exemplary embodiment is an apparatus that performs maintenance display for production apparatus 200 producing a lithium ion secondary battery. In the example illustrated in FIG. 1, maintenance display apparatus 100 is applied to single production apparatus 200, but the present disclosure is not limited thereto, and a single maintenance display apparatus may be applied to a plurality of production apparatuses. In the present exemplary embodiment, maintenance display apparatus 100 is described as an apparatus, but the present disclosure is not limited thereto, and a maintenance display system in which individual constituents are connected to each other via a network may be used.

Maintenance display apparatus 100 includes server 10 having storage 110 and controller 120, and notifier 130. Server 10 is communicably connected to production apparatus 200 via network NT. Network NT is, for example, a public network such as the Internet, or a local network such as an in-company local area network (LAN).

Server 10 is, for example, a general-purpose computer, and has storage 110 and controller 120 as illustrated in FIG. 1.

Storage 110 is a main storage apparatus (not illustrated) such as a read only memory (ROM) or a random access memory (RAM), and/or an auxiliary storage apparatus (not illustrated) such as a hard disk drive (HDD), a solid state drive (SSD), or a flash memory.

Controller 120 is, for example, a hardware processor (not illustrated) such as a central processing unit (CPU), and controls the entire maintenance display apparatus 100 by loading and executing a program stored in storage 110.

Storage 110 and controller 120 may not be configured as an integrated computer. In other words, storage 110 and controller 120 may be configured separately from each other and disposed at distant positions as long as the storage and the controller are configured to be able to communicate with each other. Maintenance display apparatus 100 may have an operator (not illustrated in FIG. 1) and receive an operation input from the outside. Details of storage 110 and controller 120 will be described later.

In the example illustrated in FIG. 1, notifier 130 is included in production apparatus 200, and is connected to server 10 via network NT. Notifier 130 performs a notification on a user of maintenance display apparatus 100 under the control of controller 120. In the present exemplary embodiment, the user of maintenance display apparatus 100 includes an administrator of maintenance display apparatus 100 or a worker who performs production of a winding body (refer to FIG. 3B described later) by using production apparatus 200.

As illustrated in FIG. 1, notifier 130 has alarm 131 and display 132. Alarm 131 is configured to issue an alarm to the user with sound, light, or the like by using a buzzer or a lamp. Display 132 is a display apparatus such as a liquid crystal display or an organic EL display, and has a configuration of displaying a warning content. In addition to alarm 131 and display 132, notifier 130 may include, for example, a transmitter that transmits a mail including a warning content to a pre-registered user's mail address.

Production apparatus 200 is an apparatus producing a lithium ion secondary battery in the present exemplary embodiment. As illustrated in FIG. 1, production apparatus 200 has winder 201 and inspection machine 207. As details will be described later, winder 201 winds a positive electrode sheet and a negative electrode sheet to produce a winding body. Inspection machine 207 inspects the winding body produced by winder 201.

In the example illustrated in FIG. 1, notifier 130 is included in production apparatus 200, but the present disclosure is not limited thereto, and notifier 130 may be installed outside production apparatus 200. In the example illustrated in FIG. 1, notifier 130 is connected to server 10 via network NT, but the present disclosure is not limited thereto, and server 10 and notifier 130 may be directly connected to each other without using network NT.

In the present exemplary embodiment, a case where production apparatus 200 is an apparatus producing a lithium ion secondary battery will be described, but the present disclosure is not limited thereto. The maintenance display apparatus of the present disclosure may be applied to production facilities other than the production apparatus for a lithium ion secondary battery. The maintenance display apparatus of the present disclosure may be applied to various facilities other than the production facility.

FIG. 2 is a flowchart for describing all process steps in maintenance display apparatus 100.

In step S1, controller 120 causes winder 201 of production apparatus 200 to produce a winding body.

In step S2, controller 120 causes inspection machine 207 to inspect the produced winding body. Details of the inspection of the winding body in inspection machine 207 will be described later.

In step S3, controller 120 stores the inspection result from inspection machine 207 into storage 110. Simultaneously, in step S4, controller 120 determines whether or not the winding body is a defective product as a result of the inspection in inspection machine 207. In a case where it is determined that the winding body is not a defective product (step S4: NO), controller 120 causes the process to proceed to step S5. In a case where it is determined that the winding body is a defective product (step S4: YES), controller 120 causes the process to proceed to step S6.

In a case where it is determined that the winding body is not a defective product, in step S5, controller 120 causes production apparatus 200 to supply the winding body to the next step.

In a case where it is determined that the winding body is a defective product, in step S6, controller 120 causes notifier 130 to perform a notification that the defective product has been detected. Details of the notification performed by notifier 130 will be described later.

In step S7, controller 120 causes production apparatus 200 to discard the winding body determined as being a defective product.

In steps S5 and S7 of the flowchart illustrated in FIG. 2, controller 120 causes production apparatus 200 to supply the winding body to the next step or to discard the winding body, but the present disclosure is not limited thereto. For example, a user of maintenance display apparatus 100 may be notified via notifier 130 such that the winding body is supplied to the next step or the winding body is discarded, and thus the user may be supplied with the winding body or may discard the winding body.

Next, winder 201 and inspection machine 207 of production apparatus 200 will be described in detail.

Winder 201

FIG. 3A is a diagram exemplifying configurations of winder 201 and inspection machine 207.

As illustrated in FIG. 3A, winder 201 includes first supply reel 50, second supply reel 51, first bonding roller 205A, second bonding roller 205B, winding core 206, winding core rotation driver 206M, inspection machine 207, index table 208, cutters 209, presser 210, tab welder 211, tape paster 212, and cylinder 213. Winder 201 is an apparatus that bonds first sheet material 202 supplied from first supply reel 50 to second sheet material 203 supplied from second supply reel 51 with first bonding roller 205A and second bonding roller 205B, and produces winding body 204 by winding the sheet materials on winding core 206. Winding core rotation driver 206M drives winding core 206 at a desired rotation speed.

First sheet material 202 is, for example, a sheet-shaped member (positive electrode sheet) coated with a positive electrode material, and second sheet material 203 is, for example, a sheet-shaped member (negative electrode sheet) coated with a negative electrode material. First sheet material 202 is an example of a first electrode sheet of the present disclosure, and second sheet material 203 is an example of a second electrode sheet of the present disclosure. In the above-described example, first sheet material 202 is a positive electrode sheet material and second sheet material 203 is a negative electrode sheet material, but the present disclosure is not limited thereto, and first sheet material 202 may be a negative electrode sheet material, and second sheet material 203 may be a positive electrode sheet material.

Index table 208 rotates each of the winding cores 206 along a circular orbit while rotating the winding cores stepwise at predetermined angles. Consequently, one of three winding cores 206 (206 a, 20613, and 206 y) is disposed at a winding position. The winding position is a position where winding core 206 can be rotated by winding core rotation driver 206M.

In the example illustrated in FIG. 3A, the configuration in which index table 208 sequentially switches the three winding cores is described, but the present disclosure is not limited thereto, and the number of winding cores 206 held by index table 208 may be two or more.

Cutters 209 cut first sheet material 202 and second sheet material 203 when the winding on one winding core 206 is completed. In this case, presser 210 presses winding body 204 wound on winding core 206, and thus suppresses the fluttering of ends of the cut first sheet material 202 and second sheet material 203. In the example illustrated in FIG. 3A, cutters 209 are disposed at positions where first sheet material 202 and second sheet material 203 are cut before being bonded to each other, but may be disposed at positions where first sheet material 202 and second sheet material 203 are cut after being bonded to each other.

Tab welder 211 welds a current collecting tab to first sheet material 202. Tape paster 212 fixes winding body 204 with a tape such that winding body 204 is not separated when being cut by cutters 209 after the winding on winding core 206 is completed. Cylinder 213 adjusts a tension applied to first sheet material 202 and second sheet material 203 via second bonding roller 205B.

FIG. 3B is a perspective view exemplifying winding body 204 produced in winder 201. FIG. 3B illustrates a scene in which ends (ends cut by cutters 209) of first sheet material 202 and second sheet material 203 forming winding body 204 are not wound. As illustrated in FIG. 3B, a width (a length of winding body 204 along an axial direction) of second sheet material 203 is larger than that of first sheet material 202.

Inspection Machine 207

Inspection machine 207 inspects produced winding body 204. Inspection machine 207 is, for example, a swept source-optical coherence tomography (SS-OCT) device. Inspection machine 207 is an example of a sensor of the present disclosure.

FIG. 4A is a schematic diagram exemplifying a scene in which inspection machine 207 inspects winding body 204. As illustrated in FIG. 4A, inspection machine 207 scans inspection target winding body 204 with light L by moving light L from the inside to the outside of winding body 204 in the radial direction, and generates an image (shape data) indicating a shape of an internal structure of winding body 204 by using the interference of light L.

FIG. 4B is a schematic diagram exemplifying a sectional shape of winding body 204 along the radial direction. FIG. 4C is a diagram exemplifying shape data I generated by inspection machine 207 scanning the section of winding body 204 illustrated in FIG. 4B. In FIGS. 4B and 4C, an upward-downward direction corresponds to the axial direction of winding body 204, and a leftward-rightward direction corresponds to the radial direction of winding body 204.

As illustrated in FIG. 4B, in the section of winding body 204 along the radial direction, first sheet material 202 and second sheet material 203 having a width larger than that of first sheet material 202 are alternately stacked. Inspection machine 207 extracts and images positions of both ends of first sheet material 202 along the axial direction and both ends of second sheet material 203 along the axial direction, in the radial direction of winding body 204. In the example (shape data I) illustrated in FIG. 4C, rhombus a corresponds to first data indicating the positions of both ends of first sheet material 202, and black circle 8 corresponds to second data indicating the positions of both ends of second sheet material 203.

Defective products may be produced during the production of winding body 204 in winder 201. As described above, inspection machine 207 generates shape data indicating a sectional shape of winding body 204 along the radial direction, and stores the shape data in storage 110. An inspection result that is determined on the basis of the shape data is also stored in storage 110 in the same manner. The determination based on the shape data may be performed by inspection machine 207, may be performed by controller 120 illustrated in FIG. 1, and may be performed by other constituents that are not illustrated in FIG. 1 or 3A.

FIG. 5 is a schematic diagram illustrating a correspondence between a sectional shape of winding body 204 and shape data. Sectional views of winding body 204 are exemplified on an upper part of FIG. 5. In the example illustrated in FIG. 5, a deviation in first sheet material 202 increases toward the right side.

Pieces of shape data I1 to I6 respectively generated on the basis of the sectional shapes of winding body 204 illustrated on the upper part of FIG. 5 are exemplified on a lower part of FIG. 5.

When the deviation in first sheet material 202 is large, continuous positions of an upper end surface (a first end surface of the present disclosure) of first sheet material 202 indicated by the first data may intersect continuous positions of an upper end surface (a second end surface of the present disclosure) of second sheet material 203 indicated by the second data as in shape data I5 and I6. In other words, a first virtual line segment connecting a plurality of positions of the upper end surface (a first end surface of the present disclosure) of first sheet material 202 indicated by the first data may intersect a second virtual line segment connecting a plurality of positions (a second end surface of the present disclosure) of the upper end surface of second sheet material 203 indicated by the second data. As described above, winding body 204 having such a sectional shape in which the continuous positions of the upper end surface of first sheet material 202 intersect the continuous positions of the upper end surface of second sheet material 203 is determined as being “defective” by inspection machine 207 as an inspection result.

In FIG. 5, in shape data I3 and I4, positions of first sheet material 202 deviate, but continuous positions of the upper end surface of first sheet material 202 do not intersect continuous positions of upper end surface of second sheet material 203. Winding body 204 having such a sectional shape is determined as being “fair” as an inspection result by inspection machine 207.

In shape data I1 and I2 illustrated in FIG. 5, a deviation amount of positions of first sheet material 202 is smaller than that in shape data I3 to I6. Winding body 204 having such a sectional shape is determined as being “good” as an inspection result by inspection machine 207.

For example, “good”, “fair”, and “defective” may be determined on the basis of the following criteria. Inspection machine 207 specifies the shortest distance between a position of the upper end surface of first sheet material 202 and a position of the upper end surface of second sheet material 203. Inspection machine 207 determines that a winding body is “defective” in a case where the specified distance is “0”, determines that the winding body is “fair” in a case where the specified distance is greater than 0 and is less than or equal to a predetermined threshold value, and determines that the winding body is “good” in a case where the specified distance is greater than the predetermined threshold value. The predetermined threshold value may be set as appropriate on the basis of a balance such as battery design, required safety, or cost.

In step S4 in the flowchart of FIG. 2, it is determined whether or not winding body 204 is a defective product, but, in the determination in this step, winding body 204 of which the inspection result indicates “defective” is determined as being a defective product. On the other hand, in the determination in the step, winding body 204 of which an inspection result indicates “good” or “fair” is determined as not being a defective product.

As mentioned above, in a case where continuous positions of the upper end surface indicated by the first data intersect continuous positions of the upper end surface indicated by the second data, winding body 204 is determined as being defective. Such a defect of winding body 204 is caused by a defect of each constituent of winder 201 illustrated in FIG. 3A. Specifically, such a deviation may occur due to at least one of first supply reel 50, second supply reel 51, first bonding roller 205A, second bonding roller 205B, winding core 206, inspection machine 207, cutters 209, presser 210, tab welder 211, tape paster 212, and cylinder 213.

It is empirically known that the shape data obtained by inspection machine 207 makes a subtle difference depending on which constituent of winder 201 causes a defect in winding body 204. In the example illustrated in FIG. 5, the difference in the shape data is exaggerated, but the difference is actually minute, and it is difficult to visually determine whether or not the difference occurs. Therefore, it is almost impossible for a person to visually see a plurality of pieces of shape data and to determine which constituent of winder 201 has a defect.

Maintenance display apparatus 100 according to the exemplary embodiment of the present disclosure collects a large amount of shape data, determines in which constituent of winder 201 a defect may have highly possibly occurred by performing machine learning on the basis of the large amount of shape data, and performs a notification of a constituent of which maintenance is recommended on the basis of the determination result. Consequently, it is expected that a constituent to be maintained will be maintained in a sign stage before an abnormality actually occurs in winding body 204. Hereinafter, various processes performed by maintenance display apparatus 100 according to the exemplary embodiment of the present disclosure will be described in detail.

In the example illustrated in FIG. 5, “good”, “fair”, and “defective” are determined on the basis of a relative position (an amount of deviation from parallel) between line segments (the first virtual line segment and the second virtual line segment) respectively formed by the continuous positions of the upper end surface of first sheet material 202 and second sheet material 203. However, the present disclosure is not limited thereto, and “good”, “fair”, and “defective” may be determined on the basis of, for example, a line segment formed by continuous positions of the lower end surfaces.

In the present specification, for better understanding of description, as illustrated in FIG. 5, a description will be made of a defect of winding body 204 in which first sheet material 202 deviates relative to second sheet material 203 with the passage of time, but a defect of the winding body in the present disclosure is not limited thereto. The defect of the winding body includes not only a deviation in the first sheet material but also a deviation in the second sheet material and a case where both the first sheet material and the second sheet material deviate together. As exemplified in FIG. 5, the defect of the winding body includes not only a defect that the continuous positions of the upper end of the first sheet are diagonally tilted, but also a defect that the first sheet material intersects the second sheet material due to wavy positions or positions partially deviating relative to the continuous positions. In a case where all or some of the positions of the upper end or the lower end of the first sheet material or the second sheet material cannot be obtained in the shape data, it cannot be determined whether or not the first sheet material intersects the second sheet material intersect. Therefore, the defect of the winding body also includes a case where the winding body is determined as being defective when an obtained number of positions of the upper end or the lower end of the first sheet material or the second sheet material is less than or equal to a certain value.

Maintenance Display Apparatus 100

Next, a functional configuration and an operation of maintenance display apparatus 100 that displays maintenance work for production apparatus 200 described above will be described in detail. The maintenance work in the present exemplary embodiment is work of appropriately performing adjustment of each constituent or component replacement on production apparatus 200 such that winding body 204 produced from production apparatus 200 does not have a defect. The maintenance work is performed by a worker or the like who actually handles production apparatus 200.

Storage 110

FIG. 6 is a block diagram exemplifying a functional configuration of maintenance display apparatus 100 according to a first exemplary embodiment. As described above, maintenance display apparatus 100 includes storage 110, controller 120, and notifier 130 (refer to FIG. 1).

As illustrated in FIG. 6, storage 110 has production result database 111, facility state diagnosis model database 112, and maintenance result database 113.

Production result database 111 is a database in which production result data regarding a production result of production apparatus 200 is registered. The production result data includes the production date and time of produced winding body 204 and shape data of winding body 204.

FIGS. 7A and 7B are diagrams exemplifying production result data PD. FIG. 7A illustrates part of production result data PD in a table form. As illustrated in FIG. 7A, production result data PD includes respective pieces of data such as the “production date and time (reading date and time)”, a “facility”, an “inspection result”, a “first sheet material”, a “second sheet material”, and a “shape data ID”.

The “production date and time (reading date and time)” data is data regarding the production date and time at which winding body 204 was produced and the date and time (reading date and time) at which the winding body was inspected by inspection machine 207 and the shape data was read. The production date and time and the reading date and time may or not be the same as each other, and either thereof may be included in production result data PD. The “production date and time (reading date and time)” data is an example of time information of the present disclosure. The “facility” data is data for identifying a facility that has achieved production results in a case where there are plurality of production apparatuses 200. In FIG. 7A, as an example, identifiers “A”, “B”, and “C” of different production apparatuses 200 are illustrated.

The “inspection result” data is data indicating an inspection result (refer to FIG. 5) of winding body 204 produced in production apparatus 200. In FIG. 7A, as an example, the inspection results in three stages such as “good”, “fair”, and “defective” are illustrated.

The “first sheet material” data and the “second sheet material” data are data regarding materials used to produce winding body 204. An identifier for identifying each material is stored as the “first sheet material” data and the “second sheet material” data.

The “shape data ID” is an identification number correlated with shape data (refer to FIG. 5) indicating a sectional shape of winding body 204. FIG. 7B exemplifies a correspondence relationship between the shape data ID and the shape data.

Among the pieces of production result data PD, each piece of data other than the shape data is, for example, automatically or manually input by a worker every time winding body 204 is produced in production apparatus 200, to be registered in production result database 111. The shape data is generated when produced winding body 204 is inspected by inspection machine 207 (refer to FIG. 1 or FIG. 4A), and is registered in correlation with the shape data ID. In other words, production result data PD substantially includes the shape data of winding body 204. Consequently, every time winding body 204 is produced, production result data PD of the produced winding body 204 is registered in production result database 111.

Facility state diagnosis model database 112 is a database in which plurality of facility state diagnosis models M are registered. Facility state diagnosis model M is a learned model that serves as a diagnosis reference and is used for diagnosing whether or not maintenance work is required for production apparatus 200. Facility state diagnosis model M is a learned model in which corresponding maintenance work that is effective to a certain defect has been learned in a case where production apparatus 200 producing a defective product is improved through maintenance work (a production ratio of the defective product is reduced). More specifically, facility state diagnosis model M is an aggregate of data that includes shape data of a winding body including a plurality of defective products and contents of maintenance work performed to improve the defects of the defective products. Facility state diagnosis model M is generated by facility state diagnosis model generator 124 described later.

Facility state diagnosis model M is generated for each piece of maintenance work in which a production ratio of defective products is reduced during the subsequent production of the winding body due to the maintenance work. In other words, for example, facility state diagnosis model M related to maintenance work performed yesterday and facility state diagnosis model M related to maintenance work performed today are independently generated.

A format of facility state diagnosis model M is not particularly limited, but it is desirable that a machine learning model such as a neural network model is employed in order to further improve the diagnosis accuracy. Selection of a model employed in facility state diagnosis model M may be performed by a user of maintenance display apparatus 100 via an operator or the like (not illustrated), and may be performed by facility state diagnosis model generator 124.

Maintenance result database 113 is a database in which maintenance result data MD regarding maintenance work actually performed on production apparatus 200 is registered. Maintenance result data MD includes, for example, facility data for identifying production apparatus 200, data regarding the date and time at which the maintenance work was performed (maintenance date and time), and data indicating a content of performed maintenance work. For example, in a case of maintenance work that is finished in a short time of several minutes, the maintenance date and time may be the start time or the end time of the maintenance work. In a case where the maintenance work takes a long time, for example, several hours, the maintenance date and time is preferably the central time of the maintenance work. FIG. 8 is a diagram exemplifying maintenance result data MD. Maintenance result data MD is manually input to maintenance display apparatus 100 by a worker or the like who has actually performed maintenance work for production apparatus 200 via, for example, an operator that is not illustrated in FIG. 1 immediately after the maintenance work is executed.

Controller 120

As illustrated in FIG. 6, controller 120 includes facility state diagnoser 121, notification determinator 122, maintenance effect determinator 123, and facility state diagnosis model generator 124.

Facility state diagnoser 121 diagnoses a state of production apparatus 200 by using shape data of new winding body 204 that is produced in production apparatus 200 and facility state diagnosis model M. The diagnosis result is calculated as coincidence C indicating the degree of coincidence between the shape data of the produced new winding body 204 and the past shape data included in facility state diagnosis model M. Here, facility state diagnosis model M includes a content of maintenance work and shape data before the time at which the maintenance work is performed. Therefore, coincidence C is a value indicating the degree to which a defect of winding body 204 is reduced by performing maintenance work included in facility state diagnosis model M in a case where the defect of winding body 204 having the shape data included in facility state diagnosis model M occurred in the past. In other words, coincidence C between the shape data of produced new winding body 204 and the shape data included in facility state diagnosis model M indicates a probability of a defect of winding body 204 being improved by performing maintenance included in facility state diagnosis model M.

As a method of calculating coincidence C by comparing a plurality of pieces (m) of shape data of produced new winding body 204 with a plurality of pieces (n) of past shape data included in facility state diagnosis model M, pattern matching, or deep learning using feature amounts of a plurality of pieces of dimensionally compressed shape data may be used as appropriate. The coincidence may be calculated on the basis of a distance between vectors obtained from respective pieces of shape data.

Notification determinator 122 determines whether or not to perform a notification of maintenance work for production apparatus 200 on the basis of coincidence C. Notification determinator 122 determines that a notification that the maintenance work is to be performed will be performed in a case where coincidence C is greater than or equal to a predetermined threshold value, and determines that the notification will not be performed in a case where coincidence C is less than the predetermined threshold value. The notification of the maintenance work includes an alarm for attracting the user's attention, display for performing a notification of a content of a maintenance work that can be expected to be effective by performing the maintenance work, and the like.

Maintenance effect determinator 123 determines whether or not the maintenance work for production apparatus 200 is effective. Maintenance effect determinator 123 determines whether or not the maintenance work is effective on the basis of, for example, defect ratios before and after maintenance work (a ratio of defective products to a total number of products) or shape data of winding body 204 before and after the maintenance work (refer to FIG. 5).

Facility state diagnosis model generator 124 generates facility state diagnosis model M on the basis of maintenance result data MD determined as being effective and shape data of a defective product produced before the maintenance work is performed. Facility state diagnosis model M generated by facility state diagnosis model generator 124 is registered in facility state diagnosis model database 112 described above.

Overall Flow of Processes in Maintenance Display Apparatus 100

Next, with reference to FIGS. 9 and 10, a description will be made of the overall flow of processes in maintenance display apparatus 100 having the functional configuration illustrated in FIG. 6. FIGS. 9 and 10 are sequence diagrams for schematically describing the overall flow of processes in maintenance display apparatus 100.

FIG. 9 schematically illustrates a learning process in maintenance display apparatus 100 and an identification process using a learned model generated through the learning process.

Learning Process

A learning process in maintenance display apparatus 100 is a process for generating a learned model (facility state diagnosis model M) in which, in a case where a defective product is produced by production apparatus 200, corresponding maintenance work that improves a defective product related to certain shape data has been learned. Therefore, the learning process is based on the maintenance work being performed before the start of the learning process.

In step S11, maintenance effect determinator 123 acquires shape data (refer to FIG. 5) included in production result data PD (refer to FIG. 7) regarding plurality of winding bodies 204 produced before maintenance work performed (before the maintenance date and time illustrated in FIG. 8) before the start of the learning process, and calculates defect ratio Nf_(before) before the maintenance work on the basis of the shape data. Defect ratio Nf_(before) is calculated by dividing, for example, the number of winding bodies 204 determined as being defective among winding bodies 204 produced before the maintenance work by a total number of winding bodies produced before the maintenance work. Defect ratio Nf_(before) is an example of a first defect ratio of the present disclosure.

In step S12, maintenance effect determinator 123 acquires shape data included in production result data PD regarding plurality of winding bodies 204 produced after the maintenance work (after the maintenance date and time illustrated in FIG. 8), and calculates defect ratio Nf_(after) after the maintenance work on the basis of the shape data. Defect ratio Nf_(after) is calculated by dividing, for example, the number of winding bodies 204 determined as being defective among winding bodies 204 produced after the maintenance work by a total number of winding bodies produced after the maintenance work. Defect ratio Nf_(after) is an example of a second defect ratio of the present disclosure.

In step S13, maintenance effect determinator 123 compares defect ratios Nf_(before) and Nf_(after) before and after the maintenance work with each other, and determines whether or not the maintenance work is effective. Details of the process of determining an effect of the maintenance work in maintenance effect determinator 123 in the learning process will be described later.

In a case where it is determined in step S13 that the maintenance work is effective, maintenance effect determinator 123 outputs maintenance result data MD (refer to FIG. 8) indicating a content of the maintenance work performed before the start of the learning process, to facility state diagnosis model generator 124 in step S14.

In step S15, facility state diagnosis model generator 124 generates facility state diagnosis model M by using maintenance result data MD determined as being effective. Details of facility state diagnosis model M will be described later.

In step S16, facility state diagnosis model generator 124 registers generated facility state diagnosis model M into facility state diagnosis model database 112 (refer to FIG. 6).

The processes from step S11 to step S16 described above correspond to the learning process in maintenance display apparatus 100.

Identification Process

In the identification process described below, in a case where plurality of new winding bodies 204 are produced in production apparatus 200, whether or not an abnormality or a sign of an abnormality has occurred in plurality of produced new winding bodies 204 is identified by using facility state diagnosis model M generated in the learning process.

In step S17, facility state diagnoser 121 acquires shape data (hereinafter, new shape data) regarding the plurality of produced new winding bodies.

In step S18, facility state diagnoser 121 calculates coincidence C by using the new shape data and facility state diagnosis model M. Coincidence C is a value indicating the degree of coincidence between the new shape data and the past shape data included in facility state diagnosis model M. In other words, the larger coincidence C, the higher the probability that an abnormality or a sign of an abnormality may have occurred in production apparatus 200, and thus produced new winding body 204 may become a defective product.

In step S19, notification determinator 122 determines that a notification is necessary for a user of maintenance display apparatus 100 in a case where coincidence C is greater than or equal to a predetermined threshold value. The case where coincidence C is greater than or equal to a predetermined threshold value is a case where an abnormality or a sign of an abnormality has occurred in production apparatus 200 and maintenance work is required again.

In step S110, notification determinator 122 outputs a content of the maintenance work of which a notification is necessary for the user to notifier 130. The content of the maintenance work of which a notification is necessary for the user is determined on the basis of facility state diagnosis model M in which coincidence C is greater than or equal to a predetermined threshold value.

In steps S111 and S112, notifier 130 notifies the user that the maintenance work is required to be performed. In step S111, alarm 131 issues an alarm. In step S112, display 132 displays the content of the maintenance work of which a notification is necessary for the user. FIG. 9 illustrates an example in which both the alarm in step S111 and the content display of the maintenance work in step S112 are performed, but, for example, the alarm may not be issued and only the content display of the maintenance work may be performed.

As described above, a worker who has received the notification in steps S111 and S112 executes the maintenance work for production apparatus 200 through the notification on the basis of the content of the maintenance work of which the notification has been performed.

The processes from step S17 to step S112 described above correspond to the identification process in maintenance display apparatus 100 using the learned model generated in the learning process.

FIG. 10 schematically illustrates an update process in maintenance display apparatus 100 and an identification process using a learned model updated in the update process.

Update Process

In an update process in maintenance display apparatus 100, in a case where new maintenance work is performed after the above-described learning process, the learned model (facility state diagnosis model M) is updated on the basis of a maintenance work result based on the maintenance work. In other words, the update process is based on the maintenance work being performed before the start of the update process.

In step S21, maintenance effect determinator 123 calculates coincidence C_(before) before the maintenance work by using shape data (refer to FIG. 5) included in production result data PD (refer to FIG. 7A) regarding plurality of winding bodies 204 produced before the maintenance work, and facility state diagnosis model M registered in the facility state diagnosis model database 112. Coincidence C_(before) before maintenance work is an example of a first probability of the present disclosure.

In step S22, maintenance effect determinator 123 calculates coincidence C_(after) after the maintenance work by using the shape data included in the production result data regarding plurality of winding bodies 204 produced after the maintenance work, and the past shape data included in facility state diagnosis model M registered in facility state diagnosis model database 112. Coincidence C_(after) after maintenance work is an example of a second probability of the present disclosure.

In step S23, maintenance effect determinator 123 compares coincidences C_(before) and C_(after) before and after the maintenance work with each other, and thus determines whether or not the maintenance work is effective. Details of the process of determining an effect of the maintenance work in maintenance effect determinator 123 in the update process will be described later.

In a case where it is determined in step S23 that the maintenance work is effective, maintenance effect determinator 123 outputs maintenance result data MD indicating a content of the maintenance work performed before the start of the update process, to facility state diagnosis model generator 124 in step S24.

In step S25, facility state diagnosis model generator 124 updates facility state diagnosis model M by using maintenance result data MD determined as being effective. Details of the process of updating facility state diagnosis model M will be described later.

In step S26, facility state diagnosis model generator 124 updates facility state diagnosis model database 112 (refer to FIG. 6) by using generated facility state diagnosis model M.

The processes from step S21 to step S26 described above correspond to the update process in maintenance display apparatus 100.

Identification Process

In the identification process described below, in a case where plurality of new winding bodies 204 are produced in production apparatus 200, whether or not an abnormality or a sign of an abnormality has occurred in plurality of produced new winding bodies 204 is identified by using facility state diagnosis model M updated in the update process.

In step S27, facility state diagnoser 121 acquires shape data (hereinafter, new shape data) of the plurality of produced new winding bodies.

In step S28, facility state diagnoser 121 calculates coincidence C by using the new shape data and facility state diagnosis model M. Coincidence C is a value indicating the degree of coincidence between the new shape data and the past shape data included in facility state diagnosis model M.

In step S29, notification determinator 122 determines that a notification is necessary for a user of maintenance display apparatus 100 in a case where coincidence C is greater than or equal to a predetermined threshold value. The case where coincidence C is greater than or equal to a predetermined threshold value is a case where an abnormality or a sign of an abnormality has occurred in production apparatus 200 and maintenance work is required again.

In step S210, notification determinator 122 outputs a content of the maintenance work of which a notification is necessary for the user to notifier 130. The content of the maintenance work of which a notification is necessary for the user is determined on the basis of facility state diagnosis model M in which coincidence C is greater than or equal to a predetermined threshold value.

In steps S211 and S212, notifier 130 notifies the user that the maintenance work is required to be performed. In step S211, alarm 131 issues an alarm. In step S212, display 132 displays the content of the maintenance work of which a notification is necessary for the user. FIG. 10 illustrates an example in which both the alarm in step S211 and the content display of the maintenance work in step S212 are performed, but, for example, the alarm may not be issued and only the content display of the maintenance work may be performed.

A worker who has received the notification through the notification in steps S211 and S212 executes the maintenance work for production apparatus 200 on the basis of the content of the maintenance work of which the notification has been performed.

The processes from step S27 to step S212 described above correspond to the identification process in maintenance display apparatus 100. The identification process from step S27 to step S212 illustrated in FIG. 10 is substantially the same as the identification process from step S17 to step S112 illustrated in FIG. 9.

Details of Each Process

Hereinafter, each of the learning process, the identification process, and the update process illustrated in FIGS. 9 and 10 will be described in detail.

Learning Process

First, the learning process in maintenance effect determinator 123 and facility state diagnosis model generator 124 will be described.

Process in Maintenance Effect Determinator 123

Hereinafter, a description will be made of processes (processes from steps S11 to S14 in FIG. 9) executed by maintenance effect determinator 123 in the learning process. FIG. 11 is a flowchart for describing the processes executed by maintenance effect determinator 123 in the learning process.

In step S31, maintenance effect determinator 123 reads, from production result database 111, production result data list PL_(before) including all production result data regarding winding bodies 204 produced a predetermined time before the time (the maintenance date and time illustrated in FIG. 8) at which the maintenance work is performed before the learning process among pieces of production result data registered in production result database 111. The predetermined time is a preset length of time and is a time required for manufacturing a certain number or more of the winding bodies 204. Read production result data list PL_(before) includes production result data PD regarding each of a predetermined number or more of winding bodies 204 having different production dates and times (reading dates and times).

In step S32, maintenance effect determinator 123 calculates pre-maintenance defect ratio Nf_(before) on the basis of production result data included in production result data list PL_(before). As described above, pre-maintenance defect ratio Nf_(before) is calculated by dividing the number of winding bodies 204 determined as being defective by a total number of winding bodies produced before the maintenance work on the basis of the shape data and inspection results in the production result data included in production result data list PL_(before).

In step S33, maintenance effect determinator 123 reads, from production result database 111, production result data list PL_(after) including all production result data regarding winding bodies 204 produced a predetermined time after the time (the maintenance date and time illustrated in FIG. 8) when the maintenance is performed. Similar to the production result data list PL_(before), read production result data list PL_(after) includes production result data PD regarding each of a predetermined number or more of winding bodies 204 having different production dates and times (reading dates and times).

In step S34, maintenance effect determinator 123 calculates post-maintenance defect ratio Nf_(after) on the basis of the production result data included in production result data list PL_(after). As described above, post-maintenance defect ratio Nf_(after) is calculated by dividing the number of winding bodies 204 determined as being defective by a total number of winding bodies produced after the maintenance work on the basis of the shape data and inspection results in the production result data included in production result data list PL_(after).

In step S35, maintenance effect determinator 123 takes a difference (first difference) between pre-maintenance defect ratio Nf_(before) and post-maintenance defect ratio Nf_(after), and determines whether or not the difference is greater than predetermined threshold value Th_(N). Maintenance effect determinator 123 causes the process to proceed to step S36 in a case where the difference is greater than threshold Th_(N) (step S35: YES), and causes the process to proceed to step S37 in other cases (step S35: NO).

In step S36, maintenance effect determinator 123 determines that the maintenance work is effective since post-maintenance defect ratio Nf_(after) is lower than pre-maintenance defect ratio Nf_(before). The maintenance work in this step S36 and step S37 described later refers to the maintenance work performed before the learning process, that is, before step S11 in FIG. 9.

On the other hand, in step S37, maintenance effect determinator 123 determines that the maintenance work is not effective or the effect is very small since post-maintenance defect ratio Nf_(after) is not lower than pre-maintenance defect ratio Nf_(before).

In the above-described way, maintenance effect determinator 123 determines whether or not the maintenance work performed before the learning process is effective in the learning process.

FIGS. 12A, 12B, 13A, and 13B are conceptual diagrams for describing a scene in which an effect of the maintenance work in the learning process is determined.

FIGS. 12A and 12B illustrate an example in which first bonding roller 205A is tilted due to aged deterioration and thus winding body 204 is defective. In other words, in FIGS. 12A and 12B, a probability that defective winding body 204 is produced increases with the passage of time.

On the other hand, FIGS. 13A and 13B illustrates an example in which first bonding roller 205A is defective in the same manner as in FIGS. 12A and 12B, but first bonding roller 205A is stained with dirt instead of aged deterioration, and thus winding body 204 is defective. In other words, in FIGS. 13A and 13B, a probability that defective winding body 204 is produced is not related to the passage of time.

FIGS. 12A and 13A illustrate shape data after tilt adjustment work for first bonding roller 205A (work of straightening a rotation shaft tilted due to the aged deterioration) is performed as the maintenance work. On the other hand, FIGS. 12B and 13B illustrate shape data after cleaning work for first bonding roller 205A (work of removing the dirt adhering to first bonding roller 205A) is performed as the maintenance work.

In FIG. 12A, pieces of shape data of five winding bodies (five pieces of shape data on the left side of the figure) produced before the maintenance change with the passage of time, and only the last one piece of data is determined as being defective. In other words, in the example illustrated in FIG. 12A, pre-maintenance defect ratio Nf_(before) is 20%. In the following description, the respective pieces of shape data of a predetermined number or more (five in FIG. 12A) of winding bodies 204 arranged with the passage of time in this way will be referred to as a shape data group.

In FIG. 12A, the shape data group of the five winding bodies (five pieces of shape data on the right side of the figure) produced after the maintenance does not almost change with the passage of time, and the number of pieces of shape data determined as being defective is 0 (post-maintenance defect ratio Nf_(after)=0). This is because the aged deterioration of first bonding roller 205A, which is a cause of defective winding body 204 being produced, is eliminated through appropriate maintenance, and thus a defect ratio of winding body 204 after the maintenance is reduced. In other words, in the example illustrated in FIG. 12A, it can be said that the maintenance work is effective. In the example illustrated in FIG. 12A, a difference (first difference of the present disclosure) between pre-maintenance defect ratio Nf_(before) and post-maintenance defect ratio Nf_(after) is 20%.

On the other hand, in FIG. 12B, the shape data group of the five winding bodies produced before the maintenance changes with the passage of time as in FIG. 12A, and only the last one piece of data is determined as being defective. In other words, pre-maintenance defect ratio Nf_(before) is 20%.

In FIG. 12B, the shape data group of the five winding bodies produced after the maintenance does not almost change with the passage of time, and all the pieces of shape data are determined as being defective (post-maintenance defect ratio Nf_(after)=100%). This is because, despite the occurrence of the aged deterioration of first bonding roller 205A, inappropriate maintenance work such as cleaning work for first bonding roller 205A is performed, and thus all winding bodies 204 produced thereafter are affected by the aged deterioration of first bonding roller 205A and become defective. In other words, in the example illustrated in FIG. 12B, it can be said that a content of the performed maintenance work is not appropriate and the maintenance work is not effective. In the example illustrated in FIG. 12B, a difference (first difference of the present disclosure) between pre-maintenance defect ratio Nf_(before) and post-maintenance defect ratio Nf_(after) is −80%.

On the other hand, in FIG. 13A, since a cause of the defect is not the aged deterioration of first bonding roller 205A, the shape data group of the five winding bodies produced before the maintenance does not change with the passage of time, and is sporadically defective. In the example illustrated in FIG. 13A, only the last one piece of data is defective. In other words, pre-maintenance defect ratio Nf_(before) in the example in FIG. 13A is 20%.

In FIG. 13A, in the shape data group of the five winding bodies produced after the maintenance, the number of defective products is 0. This is because the dirt on first bonding roller 205A, which is a cause of defective winding body 204 being produced, is eliminated through appropriate maintenance, and thus a defect ratio of winding body 204 after the maintenance is improved. In other words, in the example illustrated in FIG. 13A, it can be said that the maintenance work is effective. In the example illustrated in FIG. 13A, a difference (first difference of the present disclosure) between pre-maintenance defect ratio Nf_(before) and post-maintenance defect ratio Nf_(after) is 20%.

On the other hand, in FIG. 13B, the shape data group of the five winding bodies produced after the maintenance is sporadically defective in the same manner as before the maintenance. This is because, despite winding body 204 being defective due to dirt on first bonding roller 205A, inappropriate maintenance work such as tilt adjustment work for first bonding roller 205A is performed, and thus the cause of the defect is not eliminated. In other words, in the example illustrated in FIG. 13B, it can be said that a content of the performed maintenance work is not appropriate and the maintenance work is not effective. In the example illustrated in FIG. 13B, a difference (first difference of the present disclosure) between pre-maintenance defect ratio Nf_(before) and post-maintenance defect ratio Nf_(after) is 0.

As illustrated in FIGS. 12A, 12B, 13A, and 13B, contents of maintenance work (effective to eliminate a defect) to be performed are different from each other in a case where the aged deterioration of a constituent of winding body 204 is a cause of the defect and in other cases. In maintenance display apparatus 100 according to the exemplary embodiment of the present disclosure, as illustrated in FIG. 7A, the shape data of winding body 204 is correlated with the production time at which winding body 204 is produced, or the reading time (time information) at which the shape data is read. In maintenance display apparatus 100 according to the exemplary embodiment of the present disclosure, each process can be performed in consideration of the change in the shape data with the passage of time by using the shape data correlated with the time information in the above-described way.

In the examples illustrated in FIGS. 12A, 12B, 13A, and 13B, a difference in the defect ratio related to the maintenance work determined as being effective is 20% (the examples in FIGS. 12A and 13A), and a difference in the defect ratio related to the maintenance work determined as not being defective is −80% (the example in FIG. 12B) or 0 (the example in FIG. 13B). Therefore, for example, threshold value Th_(N) is set to 10%, and thus it is possible to determine whether or not the maintenance work is effective.

In FIGS. 12A, 12B, 13A, and 13B, a description has been made of an example of a case where a cause of defective winding body 204 being produced is first bonding roller 205A, but the present disclosure is not limited thereto. As described above, in the present disclosure, a cause of defective winding body 204 being produced is at least one of the constituents (first supply reel 50, second supply reel 51, first bonding roller 205A, second bonding roller 205B, winding core 206, inspection machine 207, cutters 209, presser 210, tab welder 211, tape paster 212, and cylinder 213) of winder 201 illustrated in FIG. 3A. In a case where a constituent other than first bonding roller 205A is a cause of a defect, shape data indicate a shape different from those illustrated in FIGS. 12A, 12B, 13A, and 13B may be acquired.

Processes in Facility State Diagnosis Model Generator 124

Next, processes (the processes in steps S15 and S16 in FIG. 9) executed by facility state diagnosis model generator 124 in the learning process will be described. FIG. 14 is a flowchart for describing the processes executed by facility state diagnosis model generator 124 in the learning process.

In step S41, facility state diagnosis model generator 124 reads maintenance result data MD of the maintenance work determined as being effective by maintenance effect determinator 123.

In step S42, facility state diagnosis model generator 124 reads pre-maintenance production result data list PL_(before) from production result database 111. Here, pre-maintenance production result data list PL_(before) read by facility state diagnosis model generator 124 is the same as pre-maintenance production result data list PL_(before) read in the process performed by maintenance effect determinator 123 (refer to step S31 in FIG. 11).

In step S43, facility state diagnosis model generator 124 performs learning by using read maintenance result data MD and production result data PD included in production result data list PL_(before), and generates facility state diagnosis model M_(new).

In step S44, facility state diagnosis model generator 124 registers generated new facility state diagnosis model M_(new) into facility state diagnosis model database 112.

As mentioned above, in the learning process, new facility state diagnosis model M_(new) in which corresponding maintenance work improving a defect of winding body 204 of which shape data changes with the passage of time has been learned is generated, and is registered into facility state diagnosis model database 112.

Identification Process

Next, the identification process performed by facility state diagnoser 121 and notification determinator 122 will be described.

Processes in Facility State Diagnoser 121

Hereinafter, the processes (processes in step S17 and step S18 in FIG. 9) executed by facility state diagnoser 121 in the identification process will be described. FIG. 15 is a flowchart for describing the processes executed by facility state diagnoser 121 in the identification process.

In step S51, facility state diagnoser 121 determines whether or not new production result data PD_(new) is registered in production result database 111. In a case where new production result data PD_(new) is not registered (step S51: NO), facility state diagnoser 121 repeatedly executes step S51. In a case where new production result data PD_(new) is registered (step S51: YES), facility state diagnoser 121 causes the process to proceed to step S52.

In step S52, facility state diagnoser 121 extracts production result data list PL from production result database 111 on the basis of registered new production result data PD_(new). Production result data list PL is a list obtained by extracting production result data PD of winding bodies 204 produced a predetermined time before the production date and time of registered new production result data PD_(new) among pieces of production result data PD registered in production result database 111. In other words, at least registered new production result data PD_(new) is included in production result data list PL.

In step S53, facility state diagnoser 121 generates coincidence C by using the shape data correlated with time information included in production result data list PL and the past shape data correlated with time information included in facility state diagnosis model M read from facility state diagnosis model database 112.

More specifically, facility state diagnoser 121 extracts a shape data group (refer to FIG. 5) arranged in a time series from a predetermined number or more of pieces of production result data included in production result data list PL. On the other hand, facility state diagnoser 121 extracts plurality of facility state diagnosis models M registered in facility state diagnosis model database 112. Plurality of facility state diagnosis models M respectively correspond to different pieces of maintenance work.

Facility state diagnoser 121 calculates plurality of coincidences C in all combinations of respective shape data groups of a predetermined number or more of winding bodies 204 extracted from the production result data and shape data groups included in plurality of facility state diagnosis models M.

Processes in Notification Determinator 122

Hereinafter, a description will be made of processes (processes from step S19 to step S112 in FIG. 9) executed by notification determinator 122 in the identification process. FIG. 16 is a flowchart for describing the processes executed by notification determinator 122 in the identification process.

In step S61, notification determinator 122 aggregates coincidence C for each maintenance group on the basis of plurality of coincidences C generated by facility state diagnoser 121. The maintenance group is a group corresponding to a content of maintenance work. For example, notification determinator 122 groups the performed maintenance work on the basis of the maintenance group information illustrated in FIG. 17A. As illustrated in FIG. 17A, the maintenance group information is information in which a maintenance group is correlated with performed maintenance work included in the maintenance group. As illustrated in FIG. 17A, the maintenance group information may further include a maintenance plan to be performed corresponding to a maintenance group. In the present exemplary embodiment, a group divided for each member that is a maintenance work target is described as a maintenance group, but the present disclosure is not limited thereto, and the maintenance group may be, for example, a group divided for each content of maintenance work or for each component number of a component to be replaced in maintenance work.

In the following description, a result of aggregating coincidence C for each maintenance group will be referred to as aggregation value A. A method of generating aggregation value A may be determined as appropriate from a plurality of types of aggregation methods. Specific examples of the plurality of types of aggregation methods include, for example, a method of simply summing coincidences C, a method of averaging coincidences C, a method of selecting the maximum value from coincidences C, and a method of extracting and averaging a predetermined number of coincidences C in an upper rank.

In step S62, notification determinator 122 generates maintenance plan list ML. Maintenance plan list ML is a list of maintenance groups. For example, the maintenance groups are arranged in a descending order of aggregation value A. FIG. 17B is a diagram illustrating a specific example of maintenance plan list ML.

As illustrated in FIG. 17B, maintenance plan list ML includes data such as a “maintenance plan ID”, a “facility”, a “maintenance plan”, and an “aggregation value”. The “maintenance plan ID” data is an identifier given for each maintenance group sorted according to the magnitude of the aggregation value. As the “maintenance plan ID” data, for example, a smaller number is given as the aggregation value becomes greater. The “maintenance plan” data is data indicating a content of maintenance to be performed corresponding to a maintenance group. Notification determinator 122 specifies a maintenance plan corresponding to a maintenance group with reference to the maintenance group information illustrated in FIG. 17A. The “aggregation value” data is data indicating a value of aggregation value A aggregated for each maintenance group.

FIG. 17B exemplifies a case where first bonding roller 205A, second bonding roller 205B, first supply reel 50, and the like are maintained as an example of the maintenance plan. However, the present disclosure is not limited thereto, and any constituent of winder 201 illustrated in FIG. 3A may be a maintenance target.

In the maintenance plan illustrated in FIG. 17B, “maintenance of the first bonding roller” indicates that at least one piece of maintenance work for first bonding roller 205A such as tilt adjustment for first bonding roller 205A, cleaning of first bonding roller 205A, and replacement of first bonding roller 205A. The same applies to “maintenance of the second bonding roller” and “maintenance of the first supply reel”.

Aggregation value A is a value obtained by aggregating coincidences C, and thus has the same property as coincidence C. Thus, as aggregation value A becomes greater, the need for a maintenance content of the maintenance group to be performed on target production apparatus 200 becomes higher. Since maintenance plan list ML is a list of maintenance groups arranged in a descending order of aggregation value A, a maintenance group in an upper rank in maintenance plan list ML is highly required to be applied to maintenance of target production apparatus 200.

In step S63, notification determinator 122 determines whether or not aggregation value A is greater than predetermined sign threshold value Th_(f) for each maintenance group. Predetermined sign threshold value Th_(f) is the minimum value of aggregation values in which it is supposed that a sign that an abnormality occurs in production apparatus 200 has occurred. In the present exemplary embodiment, an abnormality in production apparatus 200 indicates that, for example, production apparatus 200 produces winding body 204 of which an inspection result indicates “defective” at a predetermined ratio or higher. The sign of an abnormality in production apparatus 200 indicates that, for example, production apparatus 200 produces winding body 204 of which an inspection result indicates “fair” at a predetermined ratio or higher. Predetermined sign threshold value Th_(f) may be empirically determined on the basis of, for example, past maintenance result data MD.

In a case where at least one maintenance group for which aggregation value A is greater than sign threshold value Th_(f) is included in maintenance plan list ML (step S63: YES), notification determinator 122 causes the process to proceed to step S64. In a case where no maintenance group for which aggregation value A is greater than sign threshold value Th_(f) is included in maintenance plan list ML (step S63: NO), notification determinator 122 finishes the process since it is not necessary to perform a notification.

In step S64, notification determinator 122 determines whether or not there is a maintenance group for which aggregation value A is greater than predetermined abnormality threshold value Th_(a) among the maintenance groups included in maintenance plan list ML. Predetermined abnormality threshold value Th_(a) is the minimum value of aggregation values in which it is supposed that an abnormality has occurred in production apparatus 200 beyond the sign stage. Thus, abnormality threshold value Th_(a) is empirically determined to a value greater than sign threshold value Th_(f) on the basis of, for example, past maintenance result data MD. In a case where a maintenance group for which aggregation value A is greater than abnormality threshold value Th_(a) is included in maintenance plan list ML (step S64: YES), notification determinator 122 causes the process to proceed to step S66. In a case where a maintenance group for which aggregation value A is greater than abnormality threshold value Th_(a) is not included in maintenance plan list ML (step S64: NO), notification determinator 122 causes the process to proceed to step S65.

In step S65, notification determinator 122 causes display 132 of notifier 130 to perform a notification of a maintenance content corresponding to the maintenance group for which aggregation value A is determined to be greater than sign threshold value Th_(f) in step S63. More specifically, notification determinator 122 displays, on display 132, for example, a content of maintenance work recommended to be executed along with a message such as “Please execute the following maintenance contents.” The content of the maintenance work recommended to be executed is a content corresponding to the “maintenance plan” data included in maintenance plan list ML illustrated in FIG. 17B.

Here, in a case where there are a plurality of maintenance groups for which aggregation value A is greater than sign threshold value Th_(f), notification determinator 122 may display contents of a plurality of pieces of maintenance work by ranking the contents with an aggregation value. In this case, more specifically, notification determinator 122 may display contents of a plurality of pieces of maintenance work recommended to be executed in an order from an upper rank along with a message such as “Please execute the following maintenance contents. In a case where the abnormality is not improved despite a maintenance content in the upper rank being executed, the abnormality may be improved if a maintenance work in the lower rank is executed”.

Notification determinator 122 performs a notification of a maintenance plan ID correlated with a maintenance group having a maintenance content along with the maintenance work content. In a case where a worker who has performed maintenance work inputs maintenance result data MD, the worker inputs maintenance result data MD and a maintenance plan ID triggering the maintenance in correlation with each other, and thus it is possible to easily determine whether or not input maintenance result data MD is data corresponding to maintenance work executed with a notification from maintenance display apparatus 100 as a trigger.

In step S66, in the same manner as in step S65, notification determinator 122 displays the content of the maintenance work on display 132, and causes notifies alarm 131 to issue an alarm for a notification that an abnormality has occurred in target production apparatus 200. In a case where a sign of an abnormality has not occurred but the abnormality has occurred in target production apparatus 200, urgent maintenance work is required. Thus, notification determinator 122 not only displays the content of the maintenance work on display 132 but also causes alarm 131 to issue an alarm, and thus promptly notifies a user of maintenance display apparatus 100 of the occurrence of the abnormality.

As described above, in the identification process, it is determined whether or not an abnormality (a defective product is produced at a predetermined ratio or higher) or a sign of the abnormality has occurred in production apparatus 200 by using production result data PD (particularly shape data and time information) of produced new winding body 204 and facility state diagnosis model M. In a case where it is determined that an abnormality or a sign of an abnormality has occurred, a notification is sent to a user. Consequently, in a case where an abnormality has occurred in production apparatus 200, the user can promptly know the abnormality and can know the content of the maintenance work to be performed in order to improve the abnormality.

Update Process

Next, the update process in maintenance effect determinator 123 and facility state diagnosis model generator 124 will be described.

Process in Maintenance Effect Determinator 123

Hereinafter, a description will be made of processes (processes from step S21 to step S24 in FIG. 10) executed by maintenance effect determinator 123 in the update process. FIG. 18 is a flowchart for describing the processes executed by maintenance effect determinator 123 in the update process.

In step S71, maintenance effect determinator 123 determines whether or not new maintenance result data MD_(new) is registered in maintenance result database 113 of storage 110. In a case where it is determined that new maintenance result data MD_(new) is not registered (step S71: NO), maintenance effect determinator 123 repeatedly executes step S71. In a case where it is determined that new maintenance result data MD_(new) is registered (step S71: YES), maintenance effect determinator 123 causes the process to proceed to step S72.

In step S72, maintenance effect determinator 123 determines whether or not a predetermined time has elapsed from execution of maintenance corresponding to registered new maintenance result data MD_(new) on the basis of the “maintenance date and time” data (refer to FIG. 8) included in registered new maintenance result data MD_(new).

In a case where it is determined that the predetermined time has elapsed from the execution time of the maintenance work (step S72: YES), maintenance effect determinator 123 causes the process to proceed to step S73. In a case where it is determined that the predetermined time has not elapsed from the execution time of the maintenance work (step S72: NO), maintenance effect determinator 123 repeatedly executes the process in step S72.

In step S73, maintenance effect determinator 123 reads pre-maintenance production result data list PL_(before) including all production result data PD of winding bodies 204 produced a predetermined time before the maintenance work from production result database 111.

In step S74, maintenance effect determinator 123 reads facility state diagnosis model M included in a maintenance group having a maintenance content corresponding to new maintenance result data MD_(new) from facility state diagnosis model database 112, and generates pre-maintenance coincidence C_(before) on the basis of read facility state diagnosis model M and production result data list PL_(before). A method of generating pre-maintenance coincidence C_(before) is the same as the method of generating coincidence C in facility state diagnoser 121 in step S53 in FIG. 15.

In step S75, maintenance effect determinator 123 reads production result data list PL_(after) including all production result data PD of winding bodies 204 produced a predetermined time after the maintenance work from production result database 111.

In step S76, maintenance effect determinator 123 reads facility state diagnosis model M included in the maintenance group having the maintenance content corresponding to maintenance result data MD_(new) from facility state diagnosis model database 112, and generates post-maintenance coincidence C_(after) on the basis of read facility state diagnosis model M and production result data list PL_(after). A method of generating coincidence C_(after) is the same as the method of generating coincidence C in facility state diagnoser 121 in step S53 of FIG. 15.

In step S77, maintenance effect determinator 123 takes a difference (an example of a second difference of the present disclosure) between pre-maintenance coincidence C_(before) and post-maintenance coincidence C_(after), and determines whether or not the difference is greater than predetermined threshold value Th_(D). Maintenance effect determinator 123 causes the process to proceed to step S78 in a case where the difference is greater than the threshold Th_(D) (step S77: YES), and causes the process to proceed to step S79 in other cases (step S77: NO). Predetermined threshold value Th_(D) may be determined as appropriate on the basis of the past maintenance work results and the like.

In step S78, since post-maintenance coincidence C_(after) is less than pre-maintenance coincidence C_(before), maintenance effect determinator 123 determines that the maintenance work performed on the basis of the maintenance content of which the notification has been performed by notification determinator 122 is effective.

In step S79, since post-maintenance coincidence C_(after) is not less than pre-maintenance coincidence C_(before), maintenance effect determinator 123 determines that the maintenance work performed on the basis of the maintenance content of which the notification has been performed by notification determinator 122 is not effective or the effect is very small.

FIGS. 19A and 19B are conceptual diagrams for describing a scene in which an effect of maintenance work in the update process is determined. FIG. 19A illustrates an example of a case where it is determined that the maintenance work is effective, and FIG. 19B illustrates an example of a case where it is determined that the maintenance work is not effective. The examples of a shape data group and maintenance work illustrated in FIG. 19A are the same as those illustrated in FIG. 12A. The examples of a shape data group and maintenance work illustrated in FIG. 19B are the same as those illustrated in FIG. 12B.

In the examples illustrated in FIGS. 19A and 19B, pre-maintenance coincidence C_(before)=0.90 is calculated on the basis of the shape data group of five winding bodies 204 produced before maintenance and facility state diagnosis model M.

In the example illustrated in FIG. 19A, post-maintenance coincidence C_(after)=0.20 is calculated on the basis of the shape data group of five winding bodies 204 produced after maintenance and facility state diagnosis model M. On the other hand, in the example illustrated in FIG. 19B, post-maintenance coincidence C_(after)=0.90 is calculated on the basis of the shape data group of five winding bodies 204 produced after maintenance and facility state diagnosis model M.

Therefore, in the example illustrated in FIG. 19A, a difference between pre-maintenance coincidence C_(before) and post-maintenance coincidence C_(after) is 0.70. On the other hand, in the example illustrated in FIG. 19B, a difference between pre-maintenance coincidence C_(before) and post-maintenance coincidence C_(after) is 0. Therefore, for example, in a case where threshold value Th_(D) for determining the presence or absence of the maintenance effect is 0.30, it is determined that the maintenance work is effective in the example illustrated in FIG. 19A, and it is determined that the maintenance work is not effective in the example illustrated in FIG. 19B.

Processes in Facility State Diagnosis Model Generator 124

Next, processes (the processes in steps S25 and S26 in FIG. 10) executed by facility state diagnosis model generator 124 in the update process will be described. FIG. 20 is a flowchart for describing the processes executed by facility state diagnosis model generator 124 in the update process.

In step S81, facility state diagnosis model generator 124 reads maintenance result data MD_(new) of the maintenance work determined as being effective by maintenance effect determinator 123.

In step S82, facility state diagnosis model generator 124 reads pre-maintenance production result data list PL_(before) from production result database 111. Here, pre-maintenance production result data list PL_(before) read by facility state diagnosis model generator 124 is the same as pre-maintenance production result data list PL_(before) read in the process performed by maintenance effect determinator 123 (refer to step S31 in FIG. 11).

In step S83, facility state diagnosis model generator 124 performs learning by using read maintenance result data MD and production result data PD included in production result data list PL_(before), and generates facility state diagnosis model M_(new).

In step S84, facility state diagnosis model generator 124 adds new facility state diagnosis model M_(new), which is the result of learning, to facility state diagnosis model M already registered in facility state diagnosis model database 112, and thus updates facility state diagnosis model M.

As mentioned above, in the update process, new facility state diagnosis model M_(new) is generated by using facility state diagnosis model M generated in the learning process, and facility state diagnosis model M already registered in facility state diagnosis model database 112 is updated by using new facility state diagnosis model M_(new). As described above, facility state diagnosis model M in facility state diagnosis model database 112 is updated by using new facility state diagnosis model M_(new) on the basis of the effective maintenance work, and thus diagnosis accuracy of a facility state of the production apparatus 200 in facility state diagnoser 121 is gradually improved.

According to a method of displaying information for maintenance of the production apparatus related to the present disclosure, in a case where it is determined that continuous positions of a first end surface indicated by first data intersect continuous positions of a second end surface indicated by second data on the basis of the first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of a predetermined number or more of winding bodies is read and the second data indicating a position of the second end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read, information indicating that a winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor is output to the display device.

According to a method of displaying information for maintenance of the production apparatus related to the present disclosure, first data indicating a position of a first end surface corresponding to time information indicating a time point at which each of a predetermined number or more of winding bodies acquired from a sensor is read and second data indicating a position of a second end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read are input to a learned model that is created according to the learned model generation method related to the present disclosure. In a case where information indicating that it is determined that continuous positions of a first end surface indicated by the first data intersect continuous positions of a second end surface indicated by the second data is output from the learned model, information indicating that a winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor is output to the display device.

Operation and Effect of Maintenance Display Apparatus 100 of First Exemplary Embodiment

As described above, maintenance display apparatus 100 includes notification determinator 122, maintenance effect determinator 123, and facility state diagnosis model generator 124 that is an example of a model generator. Notification determinator 122 acquires the first data indicating a position of the first end surface and the second data indicating a position of the second end surface read along the radial direction of winding body 204 from inspection machine 207 as the sensor. Notification determinator 122 determines whether or not winding body 204 is defective on the basis of whether or not continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data. In a case where winding body 204 has a defect, notification determinator 122 outputs information indicating that a cause of the defect is at least one of first supply reel 50, second supply reel 51, first bonding roller 205A, second bonding roller 205B, winding core 206, inspection machine 207, cutters 209, presser 210, tab welder 211, tape paster 212, and cylinder 213, to display 132 for maintenance. Maintenance effect determinator 123 extracts the first data and the second data of each of a predetermined number or more of the winding bodies generated before maintenance and read at different times, calculates first defect ratio Nf_(before) of the predetermined number or more of winding bodies read before the maintenance on the basis of the extracted first data and second data, extracts the first data and the second data of each of a predetermined number or more of winding bodies generated after the maintenance and read at different times, and calculates second defect ratio Nf_(after) of the predetermined number or more of winding bodies read after maintenance on the basis of the extracted first data and second data. Facility state diagnosis model generator 124 calculates a first difference between first defect ratio Nf_(before) and second defect ratio Nf_(after). In a case where it is determined that the first difference is less than a predetermined value, facility state diagnosis model generator 124 does not use the first data and the second data of each of the predetermined number or more of winding bodies 204 read before first supply reel 50 is maintained, for generating or updating the learned model. On the other hand, in a case where it is determined that the first difference is greater than or equal to the predetermined value, the learned model (facility state diagnosis model M) is generated or updated by using the first data and the second data of each of the predetermined number or more of winding bodies 204 read before first supply reel 50 is maintained.

On the other hand, facility state diagnosis model generator 124 calculates first probability (coincidence) C_(before) that a defect of winding body 204 may be improved by inputting the first data and the second data of each of a predetermined number or more of winding bodies 204 before first bonding roller 205A is maintained to the learned model. Facility state diagnosis model generator 124 calculates second probability (coincidence) C_(after) that a defect of winding body 204 may be improved by inputting the first data and the second data of winding bodies 204 after first bonding roller 205A is maintained to the learned model. Facility state diagnosis model generator 124 calculates a second difference between the first probability and the second probability. In a case where it is determined that the second difference is less than a predetermined value, the first data and the second data of each of the predetermined number or more of winding bodies 204 read before first bonding roller 205A is maintained are not used for creating or updating the learned model. On the other hand, in a case where it is determined that the second difference is greater than or equal to the predetermined value, the first data and the second data of each of the predetermined number or more of winding bodies 204 read before first bonding roller 205A is maintained are used for creating or updating the learned model.

As described above, according to maintenance display apparatus 100 related to the first exemplary embodiment, it is possible to execute the learning process of generating facility state diagnosis model M for diagnosing a facility state of production apparatus 200 through learning, the identification process of identifying whether or not an abnormality or a sign of the abnormality has occurred in production apparatus 200 by using facility state diagnosis model M, and performing a notification of an abnormality or a sign of abnormality in a case where the abnormality or the sign of the abnormality has occurred, and the update process of updating facility state diagnosis model M on the basis of maintenance result data MD corresponding to maintenance work that is performed on the basis of the notification.

More specifically, in the learning process, maintenance display apparatus 100 determines whether or not maintenance work is effective on the basis of registered new maintenance result data MD and a shape data group that is included in production result data PD of winding bodies 204 produced before and after the maintenance work and is correlated with time information (the production time of winding body 204 or the reading time of shape data), and generates facility state diagnosis model M by using maintenance result data MD corresponding to the maintenance work determined as being effective and the shape data group.

In the identification process, maintenance display apparatus 100 calculates coincidence C between the shape data group of winding bodies 204 produced after the maintenance work and facility state diagnosis model M for each maintenance group, and determines whether to perform issuing of an alarm and a notification of a content of the maintenance work, to perform only the notification of the content of the maintenance work, or not to perform the notification on the basis of a magnitude of coincidence C.

In the update process, maintenance display apparatus 100 determines whether or not maintenance work is effective on the basis of registered new maintenance result data MD and a shape data group included in production result data PD of winding bodies 204 produced before and after the maintenance work, generates new facility state diagnosis model M_(new) by using maintenance result data MD corresponding to the maintenance work determined as being effective and the shape data group, and updates facility state diagnosis model M by using new facility state diagnosis model M_(new).

With this configuration, it is possible to appropriately diagnose a state of production apparatus 200 by using a learned model (facility state diagnosis model M) that is generated on the basis of effective maintenance work (reduced defect ratio) among pieces of actually performed maintenance work. Since the learned model is updated at any time, the accuracy of diagnosis can be improved. In a case where it is diagnosed that an abnormality has occurred in production apparatus 200, a user can take an emergency response by issuing an alarm, and, in a case where it is diagnosed that a sign of an abnormality has occurred, the user is notified of a content of the maintenance work by which the abnormality is expected to be improved, and thus the maintenance work can be executed while the occurrence ratio of defective products in production apparatus 200 is low.

According to maintenance display apparatus 100 related to the first exemplary embodiment, facility state diagnosis model M is created and it is determined whether or not maintenance is effective by using a shape data group in which pieces of shape data of a predetermined number or more of respective winding bodies 204 are arranged in a time series. Thus, for example, even in a case where defective winding body 204 is produced due to aged deterioration of each constituent of winder 201, a process is performed on the basis of a result of learning using a plurality of shape data groups. Therefore, whether an outcome of a cause is a constituent of winder 201 and whether the cause is aged deterioration of a constituent or is temporary can be determined with high accuracy.

The maintenance display apparatus according to the present exemplary embodiment includes a notifier, a maintenance effect determinator, and a facility state diagnosis model generator. For each piece of maintenance work performed in the past, the notifier performs a notification of a content of the maintenance work on the basis of a facility state diagnosis model that is registered in a database in correlation between the content of the maintenance work and production result data before the maintenance work, and input new production result data. The maintenance effect determinator determines whether or not the maintenance work is effective on the basis of production result data before the time at which the maintenance work is performed and production result data after the time at which the maintenance work is performed. The facility state diagnosis model generator generates a new facility state diagnosis model on the basis of the production result data before the time at which the maintenance work determined as being effective is performed and the content of the maintenance work determined as being effective.

The maintenance display apparatus according to the present exemplary embodiment further includes a facility state diagnoser that generates a facility state diagnosis index indicating the degree of coincidence between registered new production result data and production result data before the maintenance work included in the facility state diagnosis model. The notifier performs a notification of the content of the maintenance work on the basis of the facility state diagnosis index.

In the maintenance display apparatus according to the present exemplary embodiment, the facility state diagnosis model generator generates the facility state diagnosis model through machine learning by using production result data before the time at which maintenance work determined as being effective is performed and maintenance result data regarding the maintenance work.

The maintenance display apparatus according to the present exemplary embodiment calculates a defect ratio in which an inspection result indicates a defect in production result data for a predetermined time before the time at which maintenance work in input new maintenance result data is performed, on the basis of data regarding the inspection result for a product of a production facility included in production result data in a case where maintenance work not based on a content of maintenance work of which a notification has been performed by the notifier and the new maintenance result data regarding the maintenance work is input. A defect ratio in which an inspection result indicates a defect in production result data for a predetermined time after the time at which maintenance work in the input new maintenance result data is performed is calculated. The maintenance effect determinator calculates a difference between the defect ratio before the maintenance work and the defect ratio after the maintenance work, and determines whether or not the maintenance work is effective on the basis of a magnitude of the difference.

SECOND EXEMPLARY EMBODIMENT

Hereinafter, a second exemplary embodiment of the present disclosure will be described. FIG. 21 is a diagram exemplifying a configuration of maintenance display apparatus 100A according to the second exemplary embodiment. In maintenance display apparatus 100A according to the second exemplary embodiment, a process performed by maintenance effect determinator 123A included in controller 120A of server 10A is different from the process performed by maintenance effect determinator 123 according to the first exemplary embodiment described above.

Hereinafter, differences from the first exemplary embodiment will be described. The same constituent as that in the first exemplary embodiment will be given the same reference numeral as that in the first exemplary embodiment, and a constituent different from that in the first exemplary embodiment will be given the reference numeral added with “A”.

In the first exemplary embodiment, it is not supposed that a user of maintenance display apparatus 100 performs maintenance work other than a content of which notification has been performed by maintenance display apparatus 100. However, actually, in terms of operation of production apparatus 200, maintenance work (maintenance work other than a maintenance content of which a notification has been performed by maintenance display apparatus 100) may be performed at any time depending on the decisions on the site or the like. In the second exemplary embodiment, a description will be made of maintenance display apparatus 100A that can cope with a case of performing maintenance work other than a maintenance content of which a notification has been performed by maintenance display apparatus 100A.

FIG. 22 is a flowchart for describing processes executed by maintenance effect determinator 123A in the second exemplary embodiment.

In step S91 in FIG. 22, maintenance effect determinator 123A determines whether or not new maintenance result data MD_(new) is registered in maintenance result database 113 of storage 110. In a case where it is determined that new maintenance result data MD_(new) is not registered (step S91: NO), maintenance effect determinator 123A repeatedly executes step S91. In a case where it is determined that new maintenance result data MD_(new) is registered (step S91: YES), maintenance effect determinator 123A causes the process to proceed to step S92.

In step S92, maintenance effect determinator 123A determines whether or not a predetermined time has elapsed from execution of maintenance work corresponding to registered new maintenance result data MD_(new) on the basis of the maintenance time data included in registered new maintenance result data MD_(new). In the same manner as the predetermined time described in the first exemplary embodiment, the predetermined time is the time required for target production apparatus 200 to produce a certain number or more of winding bodies 204 after execution of maintenance work.

In a case where it is determined that the predetermined time has elapsed from the execution of maintenance work (step S92: YES), maintenance effect determinator 123A causes the process to proceed to step S93. In a case where it is determined that the predetermined time has not elapsed from the execution of maintenance work (step S92: NO), maintenance effect determinator 123A repeatedly executes the process in step S92.

In step S93, maintenance effect determinator 123A determines whether or not there is a maintenance plan ID correlated with registered new maintenance result data MD_(new). As described in the first exemplary embodiment, notification determinator 122 performs a notification of a maintenance work content and a maintenance plan ID correlated with a maintenance group having the maintenance content. A worker performs maintenance work indicated by the maintenance plan ID of which a notification has been performed. The worker inputs maintenance result data MD by correlating the performed maintenance work with the maintenance plan ID of which a notification has been performed. Consequently, maintenance result data MD and the maintenance plan ID triggering the maintenance are correlated with each other. In this step S93, it is determined whether or not registered new maintenance result data MD_(new) is maintenance performed with the notification performed by maintenance display apparatus 100A as a trigger in the above-described way.

In step S93, in a case where there is a maintenance plan ID correlated with registered new maintenance result data MD, it is determined that the maintenance work corresponding to maintenance result data MD_(new) has been performed with a notification of maintenance contents from maintenance display apparatus 100A as a trigger. In a case where a maintenance plan ID correlated with registered new maintenance result data MD_(new) is not present, it is determined that the maintenance work corresponding to maintenance result data MD_(new) has not been performed with a notification of maintenance contents from maintenance display apparatus 100A as a trigger.

In step S93, in a case where it is determined that the maintenance plan ID is included in registered new maintenance result data MD_(new) (step S93: YES), maintenance effect determinator 123A causes the process to proceed to step S94. On the other hand, in a case where it is determined that the maintenance plan ID is not included in maintenance result data MD_(new) (step S93: NO), maintenance effect determinator 123A causes the process to proceed to step S95.

Step S94 is a process in a case where the maintenance work corresponding to registered new maintenance result data MD_(new) has been triggered by the notification of the maintenance content from maintenance display apparatus 100A. Thus, in step S94, maintenance effect determinator 123A proceeds to a process of determining whether or not there is an effect of the maintenance work triggered by the notification of the maintenance content from maintenance display apparatus 100A. The maintenance effect determination process for maintenance triggered by the notification of the maintenance content from maintenance display apparatus 100A is substantially the same as the process described with reference to FIG. 18 in the above-described first exemplary embodiment, and thus a description thereof will not be repeated.

On the other hand, step S95 is a process in a case where the maintenance work corresponding to maintenance result data MD_(new) has not been triggered by the notification of the maintenance content from maintenance display apparatus 100A. Thus, maintenance effect determinator 123A proceeds to a process of determining whether or not there is an effect of the maintenance work not triggered by maintenance display apparatus 100A. The maintenance effect determination process for maintenance not triggered by the notification of the maintenance content from maintenance display apparatus 100A is substantially the same as the process described with reference to FIG. 11 in the above-described first exemplary embodiment, and thus a description thereof will not be repeated.

As described above, according to maintenance display apparatus 100A related to the second exemplary embodiment, maintenance result data MD_(new) can be suitably registered even in a case where maintenance work not triggered by a notification of a maintenance content from maintenance display apparatus 100A has been performed. The process of maintenance effect determinator 123A described with reference to FIG. 22 may be executed in either the learning process or the update process described above.

The maintenance display apparatus according to the present exemplary embodiment generates a facility state diagnosis index before maintenance work on the basis of production result data for a predetermined time before the time at which the maintenance work in registered new maintenance result data is performed, and a facility state diagnosis model correlated with a content of maintenance work in a notification triggering maintenance work in input new maintenance result data. A facility state diagnosis index after maintenance work is generated on the basis of production result data for a predetermined time after the time at which the maintenance work in registered new maintenance result data is performed, and a facility state diagnosis model correlated with a content of maintenance work in a notification triggering maintenance work in registered new maintenance result data. The maintenance effect determinator calculates a difference between the facility state diagnosis index before the maintenance work and the facility state diagnosis index after the maintenance work, and determines whether or not the maintenance work is effective on the basis of a magnitude of the difference.

THIRD EXEMPLARY EMBODIMENT

Hereinafter, a third exemplary embodiment of the present disclosure will be described. FIG. 23 is a diagram exemplifying a configuration of maintenance display apparatus 100B according to the third exemplary embodiment. Maintenance display apparatus 100B according to the third exemplary embodiment is different from maintenance display apparatus 100 according to the first exemplary embodiment described above in that storage 110B of server 10B further includes non-effect facility state diagnosis model database 114, and controller 120B includes notification determinator 122B, maintenance effect determinator 123B, and facility state diagnosis model generator 124B.

In the first exemplary embodiment described above, facility state diagnosis model generator 124 generates new facility state diagnosis model M_(new) by using maintenance result data MD determined as being effective (refer to FIG. 14). In the third exemplary embodiment, facility state diagnosis model generator 124B generates new facility state diagnosis model M_(new) by also using maintenance result data MD determined as being ineffective.

FIG. 24 is a flowchart for describing processes performed by facility state diagnosis model generator 124B in the third exemplary embodiment. The processes described with reference to FIG. 24 may be executed in either the learning process or the update process.

In step S101, facility state diagnosis model generator 124B reads registered new maintenance result data MD_(new) from maintenance result database 113. Here, facility state diagnosis model generator 124B reads maintenance result data MD_(new) regardless of an effect determination result from maintenance effect determinator 123B.

In step S102, facility state diagnosis model generator 124B reads production result data list PL_(before) before maintenance work from production result database 111.

In step S103, facility state diagnosis model generator 124B performs learning by using read maintenance result data MD_(new) and production result data PD included in production result data list PL_(before), and generates facility state diagnosis model M_(new).

In step S104, facility state diagnosis model generator 124B registers a model that is generated on the basis of maintenance result data MD determined as being ineffective among generated new facility state diagnosis models M_(new), into non-effect facility state diagnosis model database 114. On the other hand, facility state diagnosis model generator 124B registers a model that is generated on the basis of maintenance result data MD determined as being effective among generated new facility state diagnosis models M_(new), into facility state diagnosis model database 112.

In the above-described way, facility state diagnosis model generator 124B not only generates facility state diagnosis model M using maintenance result data MD related to maintenance determined as being effective but also generates facility state diagnosis model M using maintenance result data MD related to maintenance determined as being ineffective.

An identification process is executed by facility state diagnoser 121 and notification determinator 122B by using facility state diagnosis model M generated in the above-described way. Processes executed by facility state diagnoser 121 is substantially the same as the processes described with reference to FIG. 15 in the first exemplary embodiment described above, and thus a description thereof will not be repeated.

Hereinafter, a description will be made of processes executed by notification determinator 122B in the identification process of the third exemplary embodiment. FIG. 25 is a flowchart for describing the processes performed by notification determinator 122B in the third exemplary embodiment.

In step S111, notification determinator 122B aggregates coincidence C for each maintenance group by using coincidence C generated by facility state diagnoser 121, and thus generates aggregation value A. In the third exemplary embodiment, information (flag) indicating whether or not maintenance work is determined as being effective is correlated with each maintenance group by maintenance effect determinator 123B.

In step S112, notification determinator 122B generates maintenance plan list ML that is a list of maintenance groups arranged in a descending order of aggregation value A.

In step S113, notification determinator 122B determines whether or not each maintenance group included in maintenance plan list ML is determined as being effective. As described above, in the third exemplary embodiment, since facility state diagnoser 121 correlates a flag indicating the presence or absence of an effect with each maintenance group, notification determinator 122B performs the process in step S113 by referring to the flag. Notification determinator 122B causes the process to proceed to step S114 with respect to a maintenance group of maintenance work determined as being effective. On the other hand, notification determinator 122B causes the process to proceed to step S117 with respect to a maintenance group of maintenance work determined as being ineffective.

In step S114, notification determinator 122B determines whether or not aggregation value A is greater than predetermined sign threshold value Th_(f) for each maintenance group determined as being effective. In a case where there is at least one maintenance group for which aggregation value A is greater than sign threshold value Th_(f) (step S114: YES), notification determinator 122B causes the process to proceed to step S115. In a case where there is no maintenance group for which aggregation value A is greater than sign threshold value Th_(f) (step S114: NO), notification determinator 122B finishes the process.

In step S115, notification determinator 122B determines whether or not there is a maintenance group for which aggregation value A is greater than predetermined abnormality threshold value Th_(a) among maintenance groups determined as being effective. In a case where there is a maintenance group for which aggregation value A is greater than abnormality threshold value Th_(a) (step S115: YES), notification determinator 122B causes the process to proceed to step S116. In a case where there is no maintenance group for which aggregation value A is greater than abnormality threshold value Th_(a) (step S115: NO), notification determinator 122B causes the process to proceed to step S118.

In step S116, notification determinator 122B performs a notification of a maintenance content corresponding to the maintenance group for which aggregation value A is determined as being greater than sign threshold value Th_(f) in step S114, and also issues an alarm for a notification that an abnormality has occurred in target production apparatus 200.

In step S117, notification determinator 122B determines whether or not aggregation value A is greater than predetermined non-effect threshold value Th_(ie) for each maintenance group related to maintenance determined as being ineffective. Non-effect threshold value Th_(ie) is the minimum value of aggregation values supposed to perform a notification that there is no effect. In a case where there is a maintenance group for which aggregation value A is greater than non-effect threshold value Th_(ie) (step S117: YES), notification determinator 122B causes the process to proceed to step S118. In a case where there is no maintenance group for which aggregation value A is greater than non-effect threshold value Th_(ie) (step S117: NO), notification determinator 122B finishes the process.

In step S118, notification determinator 122B performs a notification of a maintenance content corresponding to the maintenance group for which aggregation value A is determined as being greater than the sign threshold value Th_(f) in step S114. Notification determinator 122B also performs a notification of a maintenance content corresponding to the maintenance group for which aggregation value A is determined as being greater than non-effect threshold value Th_(ie) in step S117.

With this configuration, according to maintenance display apparatus 100B related to the third exemplary embodiment, it is possible to notify a user of not only a maintenance content that is supposed to be able to improve production apparatus 200 but also a content of maintenance work that was performed in the past but was not effective. Consequently, the user can avoid a situation in which ineffective maintenance work is repeatedly performed, so that the time required for maintenance can be reduced and the labor required for the maintenance can also be reduced.

In the maintenance display apparatus according to the present exemplary embodiment, the facility state diagnosis model generator generates a new facility state diagnosis model on the basis of production result data before the time at which maintenance work determined as being ineffective is performed, and maintenance result data regarding the maintenance work. The notifier performs a notification of a content of maintenance work determined as being effective as effective maintenance work, and also performs a notification of a content of maintenance work correlated with a facility state diagnosis model that is generated on the basis of maintenance result data regarding maintenance work determined as being ineffective as ineffective maintenance work.

MODIFICATION EXAMPLES

Although the exemplary embodiments according to the present disclosure have been described above with reference to the drawings, the present disclosure is not limited to such examples. It is clear that a person skilled in the art can conceive of various changes or modifications within the scope of the claims, and it is understood that they are naturally included in the technical scope of the present disclosure. The respective constituents in the above-described exemplary embodiment may be freely combined with each other within the scope without departing from the disclosed concept.

In the above-described exemplary embodiment, in the learning process, in the process of maintenance effect determinator 123 determining whether or not maintenance work is effective, it is determined whether or not the maintenance work is effective depending on whether or not a difference between defect ratios before and after the maintenance work is greater than a predetermined threshold value (refer to FIGS. 12A and 12B).

However, maintenance effect determinator 123 may determine whether or not maintenance work is effective by using other methods. FIGS. 26A and 26B are diagrams for describing a modification example of a method of maintenance effect determinator 123 determining whether or not maintenance work is effective in the learning process.

In the examples illustrated in FIGS. 26A and 26B, the presence or absence of an effect is determined on the basis of whether or not post-maintenance defect ratio Nf_(after) is greater than a predetermined threshold value (for example, 20%) without referring to a pre-maintenance defect ratio. In the example illustrated in FIG. 26A, Nf_(after)=0, which is less than the =predetermined threshold value of 20%, and thus it is determined that there is an effect. On the other hand, in the example illustrated in FIG. 26B, Nf_(after)=100%, which is greater than the predetermined threshold value of 20%, and thus it is determined that there is no effect.

Similarly, in the update process, maintenance effect determinator 123 may determine whether or not the maintenance work is effective by using a method different from that in the above-described exemplary embodiment.

In the above-described exemplary embodiment, in the update process, in the process of maintenance effect determinator 123 determining whether or not maintenance work is effective, the presence or absence of an effect is determined depending on whether or not a difference between coincidences before and after the maintenance work is greater than a predetermined threshold value (refer to FIGS. 19A and 19B).

FIGS. 27A and 27B are diagrams for describing a modification example of a method of maintenance effect determinator 123 determining whether or not maintenance work is effective in the update process.

In the examples illustrated in FIGS. 27A and 27B, the presence or absence of an effect is determined on the basis of whether or not post-maintenance coincidence C_(after) is greater than a predetermined threshold value (for example, 0.30) without referring to the pre-maintenance coincidence. In the example illustrated in FIG. 27A, C_(after)=0.20, which is less than the predetermined threshold value of 0.30, it is determined that there is an effect. On the other hand, in the example illustrated in FIG. 27B, since C_(after)=0.90, which is greater than the predetermined threshold value of 0.30, it is determined that there is no effect.

According to the present disclosure, there is provided a learned model generation method of generating a learned model for maintenance of a production apparatus including:

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method comprising:

acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information;

generating a learned model for determining whether a defect cause of the winding body is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data;

outputting, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model; and

not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second probability that the defect of the winding body is improved is greater than or equal to a predetermined value on the basis of the time information, the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second probability is less than the predetermined value.

According to the learned model generation method, the first electrode sheet may be a positive electrode sheet of a battery, and the second electrode sheet may be a negative electrode sheet of the battery.

According to the learned model generation method, the first electrode sheet may be a negative electrode sheet of a battery, and the second electrode sheet may be a positive electrode sheet of the battery.

According to the present disclosure, there is provided an apparatus outputting information for displaying information regarding maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the apparatus comprising:

a notification determinator that acquires, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point of reading or producing each of the predetermined number or more of winding bodies, and second data indicating a position of the second end surface corresponding to the time information, determines whether or not the winding body has a defect on the basis of whether or not continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data, and outputs, to a display device for maintenance, information indicating that a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where the winding body has the defect; and

a model generator that extracts the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points on the basis of the time information, calculates a first defect ratio of the predetermined number or more of winding bodies read before the maintenance on the basis of the extracted first data and second data, extracts the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points on the basis of the time information, calculates a second defect ratio of the predetermined number or more of winding bodies read after the maintenance on the basis of the extracted first data and second data, does not use the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that a first difference between the first defect ratio and the second defect ratio is less than a predetermined value, and generates the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the first difference is greater than or equal to the predetermined value.

According to the present disclosure, there is provided an apparatus outputting information for displaying information regarding maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the apparatus comprising:

a notification determinator that acquires, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which the winding body is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information, determines whether or not the winding body has a defect on the basis of whether or not continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data, and outputs, to a display device for maintenance, information indicating that a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where the winding body has the defect; and

a model generator that extracts the first data and the second data of each of the predetermined number or more of winding bodies having different reading or production time points before and after the maintenance on the basis of the time information, does not use the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that a second defect ratio of the predetermined number or more of winding bodies read after the maintenance is greater than or equal to a predetermined value on the basis of the extracted first data and second data, and generates the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second defect ratio is less than the predetermined value.

According to the present disclosure, there is provided an apparatus outputting information for displaying information regarding maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the apparatus comprising:

a model generator that acquires, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information,

determines whether or not the winding body has a defect on the basis of whether or not continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data, and generates a learned model for determining whether a defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where the winding body has the defect; and

a notification determinator that outputs, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model,

wherein the model generator does not use the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second difference between a first probability that a defect of the winding body is improved and a second probability that the defect of the winding body is improved is less than a predetermined value on the basis of the time information, the first probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points to the learned model, and the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updates the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second difference is greater than or equal to the predetermined value.

According to the present disclosure, there is provided an apparatus outputting information for displaying information regarding maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the apparatus comprising:

a model generator that acquires, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information,

determines whether or not the winding body has a defect on the basis of whether or not continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data, and generates a learned model for determining whether a defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where the winding body has the defect; and

a notification determinator that outputs, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model,

wherein the model generator does not use the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second probability that the defect of the winding body is improved is greater than or equal to a predetermined value on the basis of the time information, the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updates the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second probability is less than the predetermined value.

According to the present disclosure, there is provided a non-transitory computer readable medium storing a program executed by a computer generating a learned model for maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the program causing the computer to execute:

a procedure of acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point of reading or producing each of the predetermined number or more of winding bodies, and second data indicating a position of the second end surface corresponding to the time information;

a procedure of outputting, to a display device for maintenance, information indicating that the winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data;

a procedure of extracting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points on the basis of the time information, and calculating a first defect ratio of the predetermined number or more of winding bodies read before the maintenance on the basis of the extracted first data and second data;

a procedure of extracting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points on the basis of the time information, and calculating a second defect ratio of the predetermined number or more of winding bodies read after the maintenance on the basis of the extracted first data and second data; and

a procedure of not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for generating the learned model in a case where it is determined that a first difference between the first defect ratio and the second defect ratio is less than a predetermined value, and generating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the first difference is greater than or equal to the predetermined value.

According to the present disclosure, there is provided a non-transitory computer readable medium storing a program executed by a computer generating a learned model for maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the program causing the computer to execute:

a procedure of acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information;

a procedure of outputting, to a display device for maintenance, information indicating that the winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; and

a procedure of extracting the first data and the second data of each of the predetermined number or more of winding bodies having different reading or production time points before and after the maintenance on the basis of the time information, not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for generating the learned model in a case where it is determined that a second defect ratio of the predetermined number or more of winding bodies read after the maintenance is greater than or equal to a predetermined value on the basis of the extracted first data and second data, and generating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second defect ratio is less than the predetermined value.

According to the present disclosure, there is provided a non-transitory computer readable medium storing a program executed by a computer generating a learned model for maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the program causing the computer to execute:

a procedure of acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read or produced, and second data indicating a position of the second end surface corresponding to the time information;

a procedure of generating a learned model for determining whether a defect cause of the winding body is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data;

a procedure of outputting, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model; and

a procedure of not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second difference between a first probability that a defect of the winding body is improved and a second probability that the defect of the winding body is improved is less than a predetermined value on the basis of the time information, the first probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points to the learned model, and the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second difference is greater than or equal to the predetermined value.

According to the present disclosure, there is provided a non-transitory computer readable medium storing a program executed by a computer generating a learned model for maintenance of a production apparatus including

a first supply reel that supplies a first electrode sheet,

a second supply reel that supplies a second electrode sheet,

a first bonding roller that is provided for the first electrode sheet,

a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other,

a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and

a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the program causing the computer to execute:

a procedure of acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read or produced, and second data indicating a position of the second end surface corresponding to the time information;

a procedure of generating a learned model for determining whether a defect cause of the winding body is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data;

a procedure of outputting, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model; and

a procedure of not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second probability that the defect of the winding body is improved is greater than or equal to a predetermined value on the basis of the time information, the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second probability is less than the predetermined value.

According to the present disclosure, it is possible to detect a sign of an abnormality in a facility.

The present disclosure is useful for an apparatus that outputs information for displaying information regarding maintenance of a production facility. 

What is claimed is:
 1. A learned model generation method of generating a learned model for maintenance of a production apparatus including a first supply reel that supplies a first electrode sheet, a second supply reel that supplies a second electrode sheet, a first bonding roller that is provided for the first electrode sheet, a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other, a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method comprising: acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point of reading or producing each of the predetermined number or more of winding bodies, and second data indicating a position of the second end surface corresponding to the time information; outputting, to a display device for maintenance, information indicating that the winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; extracting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points on the basis of the time information, and calculating a first defect ratio of the predetermined number or more of winding bodies read before the maintenance on the basis of the extracted first data and second data; extracting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points on the basis of the time information, and calculating a second defect ratio of the predetermined number or more of winding bodies read after the maintenance on the basis of the extracted first data and second data; and not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for generating the learned model in a case where it is determined that a first difference between the first defect ratio and the second defect ratio is less than a predetermined value, and generating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the first difference is greater than or equal to the predetermined value.
 2. The learned model generation method of claim 1, wherein the first electrode sheet is a positive electrode sheet of a battery, and the second electrode sheet is a negative electrode sheet of the battery.
 3. The learned model generation method of claim 1, wherein the first electrode sheet is a negative electrode sheet of a battery, and the second electrode sheet is a positive electrode sheet of the battery.
 4. A learned model generation method of generating a learned model for maintenance of a production apparatus including a first supply reel that supplies a first electrode sheet, a second supply reel that supplies a second electrode sheet, a first bonding roller that is provided for the first electrode sheet, a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other, a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method comprising: acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface read along the radial direction, corresponding to the time information; outputting, to a display device for maintenance, information indicating that the winding body has a defect and a cause of the defect is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; and extracting the first data and the second data of each of the predetermined number or more of winding bodies having different reading or production time points before and after the maintenance on the basis of the time information, not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for generating the learned model in a case where it is determined that a second defect ratio of the predetermined number or more of winding bodies read after the maintenance is greater than or equal to a predetermined value on the basis of the extracted first data and second data, and generating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second defect ratio is less than the predetermined value.
 5. The learned model generation method of claim 4, wherein the first electrode sheet is a positive electrode sheet of a battery, and the second electrode sheet is a negative electrode sheet of the battery.
 6. The learned model generation method of claim 4, wherein the first electrode sheet is a negative electrode sheet of a battery, and the second electrode sheet is a positive electrode sheet of the battery.
 7. A learned model generation method of generating a learned model for maintenance of a production apparatus including a first supply reel that supplies a first electrode sheet, a second supply reel that supplies a second electrode sheet, a first bonding roller that is provided for the first electrode sheet, a second bonding roller that is provided for the second electrode sheet, and is paired with the first bonding roller to bond the first electrode sheet and the second electrode sheet to each other, a winding core that generates each of a predetermined number or more of winding bodies by winding the bonded first electrode sheet and second electrode sheet, and a sensor that reads a first end surface of the first electrode sheet and a second end surface of the second electrode sheet along a radial direction of each of the predetermined number or more of winding bodies, the learned model generation method comprising: acquiring, from the sensor, first data indicating a position of the first end surface corresponding to time information indicating a time point at which each of the predetermined number or more of winding bodies is read along the radial direction or is produced, and second data indicating a position of the second end surface corresponding to the time information; generating a learned model for determining whether a defect cause of the winding body is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor in a case where it is determined that continuous positions of the first end surface indicated by the first data intersect continuous positions of the second end surface indicated by the second data on the basis of the first data and the second data; outputting, to a display device for maintenance, information indicating that the defect cause is any one of the first supply reel, the second supply reel, the first bonding roller, the second bonding roller, the winding core, and the sensor on the basis of a determination using the learned model; and not using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance for updating the learned model in a case where it is determined that a second difference between a first probability that a defect of the winding body is improved and a second probability that the defect of the winding body is improved is less than a predetermined value on the basis of the time information, the first probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated before the maintenance and having different reading or production time points to the learned model, and the second probability being obtained by inputting the first data and the second data of each of the predetermined number or more of winding bodies generated after the maintenance and having different reading or production time points to the learned model, and updating the learned model by using the first data and the second data of each of the predetermined number or more of winding bodies read before the maintenance in a case where it is determined that the second difference is greater than or equal to the predetermined value.
 8. The learned model generation method of claim 7, wherein the first electrode sheet is a positive electrode sheet of a battery, and the second electrode sheet is a negative electrode sheet of the battery.
 9. The learned model generation method of claim 7, wherein the first electrode sheet is a negative electrode sheet of a battery, and the second electrode sheet is a positive electrode sheet of the battery. 